A portal-mounted LiDAR + camera pair distinguishes ferrous scrap from cooled slag in real time — per truck, per delivery, per heat. Feeds the EAF charge-mix planner, reduces sorting labour on the yard, cuts off-spec heats before they get charged. Custom-built for your scrap categories and your plant integration.
Ein Portal mit LiDAR und Kamera trennt Eisenschrott von erkalteter Schlacke in Echtzeit — pro LKW, pro Anlieferung, pro Heat. Speist die EAF-Chargenplanung, reduziert Sortier-Aufwand auf dem Hof und stoppt Off-Spec-Heats, bevor sie chargiert werden. Nach Maß gebaut für Ihre Schrott-Kategorien und Ihre Anlagenanbindung.
A portal-mounted LiDAR + camera pair distinguishes ferrous scrap from cooled slag in real time — per truck, per delivery, per heat. Feeds the EAF charge-mix planner, reduces sorting labour on the yard, cuts off-spec heats before they get charged. Custom-built for your scrap categories and your plant integration.
A portal-mounted LiDAR + camera pair distinguishes ferrous scrap from cooled slag in real time — per truck, per delivery, per heat. Feeds the EAF charge-mix planner, reduces sorting labour on the yard, cuts off-spec heats before they get charged. Custom-built for your scrap categories and your plant integration.
A portal-mounted LiDAR + camera pair distinguishes ferrous scrap from cooled slag in real time — per truck, per delivery, per heat. Feeds the EAF charge-mix planner, reduces sorting labour on the yard, cuts off-spec heats before they get charged. Custom-built for your scrap categories and your plant integration.
A portal-mounted LiDAR + camera pair distinguishes ferrous scrap from cooled slag in real time — per truck, per delivery, per heat. Feeds the EAF charge-mix planner, reduces sorting labour on the yard, cuts off-spec heats before they get charged. Custom-built for your scrap categories and your plant integration.
Scrap-slag classification AI is a portal-mounted perception pipeline that distinguishes ferrous scrap from cooled slag in real time on a steel-mill yard, using fused LiDAR and camera data to feed the EAF charge-mix planner.Schrott-Klassifikation KI ist eine portal-montierte Wahrnehmungs-Pipeline, die Eisenschrott in Echtzeit auf dem Stahlwerks-Hof von erkalteter Schlacke trennt — mittels Fusion von LiDAR- und Kameradaten — und das Ergebnis direkt in die EAF-Chargenmischung speist.Scrap-slag classification AI is a portal-mounted perception pipeline that distinguishes ferrous scrap from cooled slag in real time on a steel-mill yard, using fused LiDAR and camera data to feed the EAF charge-mix planner.Scrap-slag classification AI is a portal-mounted perception pipeline that distinguishes ferrous scrap from cooled slag in real time on a steel-mill yard, using fused LiDAR and camera data to feed the EAF charge-mix planner.Scrap-slag classification AI is a portal-mounted perception pipeline that distinguishes ferrous scrap from cooled slag in real time on a steel-mill yard, using fused LiDAR and camera data to feed the EAF charge-mix planner.Scrap-slag classification AI is a portal-mounted perception pipeline that distinguishes ferrous scrap from cooled slag in real time on a steel-mill yard, using fused LiDAR and camera data to feed the EAF charge-mix planner.
The pain is well-known to every EAF operator: scrap deliveries arrive contaminated with cooled slag, refractory debris, oxidised fines and the occasional non-ferrous lump. When this mix gets graded the wrong way, the charge bucket carries the wrong mass of actual iron — the heat ends up under- or over-charged, the energy balance drifts, fluxes have to be adjusted on the fly, and in the worst case the tap goes off-spec. The cost shows up as wasted electricity per tonne, extra refractory wear, and slag pits that fill faster than the schedule predicted.Den Schmerz kennt jeder EAF-Betreiber: Schrott-Anlieferungen kommen kontaminiert mit erkalteter Schlacke, Feuerfest-Bruch, oxidierten Feinanteilen und gelegentlich nicht-eisenhaltigen Stücken. Wenn diese Mischung falsch eingestuft wird, trägt der Chargenkorb die falsche Eisenmasse — das Heat wird unter- oder überchargiert, die Energiebilanz driftet, Schlackebildner müssen während des Schmelzens nachjustiert werden, und im schlimmsten Fall geht der Abstich Off-Spec. Die Kosten zeigen sich als Mehr-Strom pro Tonne, zusätzlicher Feuerfest-Verschleiß und Schlackegruben, die schneller voll werden als geplant.The pain is well-known to every EAF operator: scrap deliveries arrive contaminated with cooled slag, refractory debris, oxidised fines and the occasional non-ferrous lump. When this mix gets graded the wrong way, the charge bucket carries the wrong mass of actual iron — the heat ends up under- or over-charged, the energy balance drifts, fluxes have to be adjusted on the fly, and in the worst case the tap goes off-spec. The cost shows up as wasted electricity per tonne, extra refractory wear, and slag pits that fill faster than the schedule predicted.The pain is well-known to every EAF operator: scrap deliveries arrive contaminated with cooled slag, refractory debris, oxidised fines and the occasional non-ferrous lump. When this mix gets graded the wrong way, the charge bucket carries the wrong mass of actual iron — the heat ends up under- or over-charged, the energy balance drifts, fluxes have to be adjusted on the fly, and in the worst case the tap goes off-spec. The cost shows up as wasted electricity per tonne, extra refractory wear, and slag pits that fill faster than the schedule predicted.The pain is well-known to every EAF operator: scrap deliveries arrive contaminated with cooled slag, refractory debris, oxidised fines and the occasional non-ferrous lump. When this mix gets graded the wrong way, the charge bucket carries the wrong mass of actual iron — the heat ends up under- or over-charged, the energy balance drifts, fluxes have to be adjusted on the fly, and in the worst case the tap goes off-spec. The cost shows up as wasted electricity per tonne, extra refractory wear, and slag pits that fill faster than the schedule predicted.The pain is well-known to every EAF operator: scrap deliveries arrive contaminated with cooled slag, refractory debris, oxidised fines and the occasional non-ferrous lump. When this mix gets graded the wrong way, the charge bucket carries the wrong mass of actual iron — the heat ends up under- or over-charged, the energy balance drifts, fluxes have to be adjusted on the fly, and in the worst case the tap goes off-spec. The cost shows up as wasted electricity per tonne, extra refractory wear, and slag pits that fill faster than the schedule predicted.
Our approach fuses two sensors at the yard entrance. A 3D-LiDAR scans the load geometry as the truck rolls under a portal — bulk density signature, surface texture, void structure. A high-resolution colour camera adds material colour, oxidation tint, and visible refractory or slag signatures. A custom classifier — trained on your scrap categories (shred, bushelling, plate-and-structural, heavy melt, turnings) and your slag types — returns a per-truck breakdown: tonnage estimate per category, slag fraction, contamination flags. The result writes directly into the charge-planner or MES over OPC UA, REST or MQTT.Unser Ansatz fusioniert zwei Sensoren am Hof-Eingang. Ein 3D-LiDAR scannt die Ladegeometrie, während der LKW durchs Portal rollt — Schüttdichte-Signatur, Oberflächentextur, Hohlraum-Struktur. Eine hochauflösende Farbkamera ergänzt Materialfarbe, Oxidations-Ton und sichtbare Schlacke- oder Feuerfest-Signaturen. Ein eigener Klassifikator — trainiert auf Ihren Schrott-Kategorien (Schredder, Bushelling, Schwerschrott, Späne, Plattenschrott) und Ihren Schlacke-Typen — liefert pro LKW eine Aufschlüsselung: geschätzte Tonnage je Kategorie, Schlacke-Anteil, Kontaminations-Flags. Das Ergebnis schreibt direkt in die Chargenplanung oder ins MES — OPC UA, REST oder MQTT.Our approach fuses two sensors at the yard entrance. A 3D-LiDAR scans the load geometry as the truck rolls under a portal — bulk density signature, surface texture, void structure. A high-resolution colour camera adds material colour, oxidation tint, and visible refractory or slag signatures. A custom classifier — trained on your scrap categories (shred, bushelling, plate-and-structural, heavy melt, turnings) and your slag types — returns a per-truck breakdown: tonnage estimate per category, slag fraction, contamination flags. The result writes directly into the charge-planner or MES over OPC UA, REST or MQTT.Our approach fuses two sensors at the yard entrance. A 3D-LiDAR scans the load geometry as the truck rolls under a portal — bulk density signature, surface texture, void structure. A high-resolution colour camera adds material colour, oxidation tint, and visible refractory or slag signatures. A custom classifier — trained on your scrap categories (shred, bushelling, plate-and-structural, heavy melt, turnings) and your slag types — returns a per-truck breakdown: tonnage estimate per category, slag fraction, contamination flags. The result writes directly into the charge-planner or MES over OPC UA, REST or MQTT.Our approach fuses two sensors at the yard entrance. A 3D-LiDAR scans the load geometry as the truck rolls under a portal — bulk density signature, surface texture, void structure. A high-resolution colour camera adds material colour, oxidation tint, and visible refractory or slag signatures. A custom classifier — trained on your scrap categories (shred, bushelling, plate-and-structural, heavy melt, turnings) and your slag types — returns a per-truck breakdown: tonnage estimate per category, slag fraction, contamination flags. The result writes directly into the charge-planner or MES over OPC UA, REST or MQTT.Our approach fuses two sensors at the yard entrance. A 3D-LiDAR scans the load geometry as the truck rolls under a portal — bulk density signature, surface texture, void structure. A high-resolution colour camera adds material colour, oxidation tint, and visible refractory or slag signatures. A custom classifier — trained on your scrap categories (shred, bushelling, plate-and-structural, heavy melt, turnings) and your slag types — returns a per-truck breakdown: tonnage estimate per category, slag fraction, contamination flags. The result writes directly into the charge-planner or MES over OPC UA, REST or MQTT.
This is not an off-the-shelf SaaS. Every steel mill has its own scrap sources, its own slag pit, its own EAF charge model. We treat every engagement as a discovery + fixed-scope build, descending from our hub service Industrial Perception AI. Typically four to twelve weeks from contract to live tool, with the code and the model handed over to you at the end.Das ist kein SaaS von der Stange. Jedes Stahlwerk hat seine eigenen Schrott-Quellen, seine eigene Schlackegrube, sein eigenes EAF-Chargenmodell. Wir behandeln jedes Projekt als Discovery + Festscope-Build, abgeleitet aus unserem Hub-Service Industrielle Objekterkennung. Typisch vier bis zwölf Wochen vom Vertrag bis zum produktiven Tool — Code und Modell gehören Ihnen.This is not an off-the-shelf SaaS. Every steel mill has its own scrap sources, its own slag pit, its own EAF charge model. We treat every engagement as a discovery + fixed-scope build, descending from our hub service Industrial Perception AI. Typically four to twelve weeks from contract to live tool, with the code and the model handed over to you at the end.This is not an off-the-shelf SaaS. Every steel mill has its own scrap sources, its own slag pit, its own EAF charge model. We treat every engagement as a discovery + fixed-scope build, descending from our hub service Industrial Perception AI. Typically four to twelve weeks from contract to live tool, with the code and the model handed over to you at the end.This is not an off-the-shelf SaaS. Every steel mill has its own scrap sources, its own slag pit, its own EAF charge model. We treat every engagement as a discovery + fixed-scope build, descending from our hub service Industrial Perception AI. Typically four to twelve weeks from contract to live tool, with the code and the model handed over to you at the end.This is not an off-the-shelf SaaS. Every steel mill has its own scrap sources, its own slag pit, its own EAF charge model. We treat every engagement as a discovery + fixed-scope build, descending from our hub service Industrial Perception AI. Typically four to twelve weeks from contract to live tool, with the code and the model handed over to you at the end.
Built by the same team that delivers our LiDAR wagon-detection pipeline — six lid centroids, sub-5 cm error, two-second response. Gebaut von dem Team, das auch unsere LiDAR-Waggon-Erkennung liefert — sechs Deckel-Mittelpunkte, Fehler unter 5 cm, Antwort in zwei Sekunden. Built by the same team that delivers our LiDAR wagon-detection pipeline — six lid centroids, sub-5 cm error, two-second response. Built by the same team that delivers our LiDAR wagon-detection pipeline — six lid centroids, sub-5 cm error, two-second response. Built by the same team that delivers our LiDAR wagon-detection pipeline — six lid centroids, sub-5 cm error, two-second response. Built by the same team that delivers our LiDAR wagon-detection pipeline — six lid centroids, sub-5 cm error, two-second response.
One LiDAR plus one calibrated colour camera mounted on a steel portal at the scrap-yard entrance or weighbridge. Trucks drive through at normal speed — the system captures load geometry and surface imagery on the fly, no stopping required. IP65+ housings, dust-tolerant optics, runs in fog, snow and night light. Ein LiDAR plus eine kalibrierte Farbkamera, montiert auf einem Stahl-Portal am Schrottplatz-Eingang oder über der Waage. LKW fahren mit normaler Geschwindigkeit durch — das System erfasst Ladegeometrie und Oberflächen-Bild im Vorbeifahren, ohne Anhalten. IP65+-Gehäuse, staubtolerante Optik, läuft in Nebel, Schnee und Nacht. One LiDAR plus one calibrated colour camera mounted on a steel portal at the scrap-yard entrance or weighbridge. Trucks drive through at normal speed — the system captures load geometry and surface imagery on the fly, no stopping required. IP65+ housings, dust-tolerant optics, runs in fog, snow and night light. One LiDAR plus one calibrated colour camera mounted on a steel portal at the scrap-yard entrance or weighbridge. Trucks drive through at normal speed — the system captures load geometry and surface imagery on the fly, no stopping required. IP65+ housings, dust-tolerant optics, runs in fog, snow and night light. One LiDAR plus one calibrated colour camera mounted on a steel portal at the scrap-yard entrance or weighbridge. Trucks drive through at normal speed — the system captures load geometry and surface imagery on the fly, no stopping required. IP65+ housings, dust-tolerant optics, runs in fog, snow and night light. One LiDAR plus one calibrated colour camera mounted on a steel portal at the scrap-yard entrance or weighbridge. Trucks drive through at normal speed — the system captures load geometry and surface imagery on the fly, no stopping required. IP65+ housings, dust-tolerant optics, runs in fog, snow and night light.
The fusion classifier separates the load into your scrap categories — shred, bushelling, plate-and-structural, heavy melt, turnings — plus cooled slag, refractory debris and unknown contamination. Per-truck tonnage estimate per category, segmentation mask for visual audit. Models retrained on your labelled data, not on a public benchmark. Der Fusions-Klassifikator trennt die Ladung in Ihre Schrott-Kategorien — Schredder, Bushelling, Schwerschrott, Späne, Plattenschrott — plus erkaltete Schlacke, Feuerfest-Bruch und unbekannte Kontamination. Pro LKW geschätzte Tonnage je Kategorie, Segmentierungs-Maske für visuelle Prüfung. Modelle trainiert auf Ihren gelabelten Daten — nicht auf einem öffentlichen Benchmark. The fusion classifier separates the load into your scrap categories — shred, bushelling, plate-and-structural, heavy melt, turnings — plus cooled slag, refractory debris and unknown contamination. Per-truck tonnage estimate per category, segmentation mask for visual audit. Models retrained on your labelled data, not on a public benchmark. The fusion classifier separates the load into your scrap categories — shred, bushelling, plate-and-structural, heavy melt, turnings — plus cooled slag, refractory debris and unknown contamination. Per-truck tonnage estimate per category, segmentation mask for visual audit. Models retrained on your labelled data, not on a public benchmark. The fusion classifier separates the load into your scrap categories — shred, bushelling, plate-and-structural, heavy melt, turnings — plus cooled slag, refractory debris and unknown contamination. Per-truck tonnage estimate per category, segmentation mask for visual audit. Models retrained on your labelled data, not on a public benchmark. The fusion classifier separates the load into your scrap categories — shred, bushelling, plate-and-structural, heavy melt, turnings — plus cooled slag, refractory debris and unknown contamination. Per-truck tonnage estimate per category, segmentation mask for visual audit. Models retrained on your labelled data, not on a public benchmark.
Classification results write into the charge-planner or MES over OPC UA, REST or MQTT — same shift, before the bucket is filled. The charge model sees real category masses instead of operator estimates. Off-spec deliveries are flagged before they enter the mix; aging slag-contaminated trucks get routed back to the supplier with the evidence attached. Klassifikations-Ergebnisse schreiben in die Chargenplanung oder ins MES per OPC UA, REST oder MQTT — gleiche Schicht, bevor der Korb gefüllt wird. Das Chargenmodell sieht echte Kategorie-Massen statt Bediener-Schätzungen. Off-Spec-Anlieferungen werden vor der Mischung markiert; schlackehaltige LKW gehen mit Beweis-Anhang an den Lieferanten zurück. Classification results write into the charge-planner or MES over OPC UA, REST or MQTT — same shift, before the bucket is filled. The charge model sees real category masses instead of operator estimates. Off-spec deliveries are flagged before they enter the mix; aging slag-contaminated trucks get routed back to the supplier with the evidence attached. Classification results write into the charge-planner or MES over OPC UA, REST or MQTT — same shift, before the bucket is filled. The charge model sees real category masses instead of operator estimates. Off-spec deliveries are flagged before they enter the mix; aging slag-contaminated trucks get routed back to the supplier with the evidence attached. Classification results write into the charge-planner or MES over OPC UA, REST or MQTT — same shift, before the bucket is filled. The charge model sees real category masses instead of operator estimates. Off-spec deliveries are flagged before they enter the mix; aging slag-contaminated trucks get routed back to the supplier with the evidence attached. Classification results write into the charge-planner or MES over OPC UA, REST or MQTT — same shift, before the bucket is filled. The charge model sees real category masses instead of operator estimates. Off-spec deliveries are flagged before they enter the mix; aging slag-contaminated trucks get routed back to the supplier with the evidence attached.
We keep the architecture boring on purpose. Three loosely coupled stages, each one independently testable, each one swappable when the sensor stack changes. Built on the same stack we use across all our perception work: PCL, Open3D, OpenCV, PyTorch. Wir halten die Architektur absichtlich langweilig. Drei lose gekoppelte Stufen, jede einzeln testbar, jede einzeln tauschbar, wenn sich der Sensor-Stack ändert. Gebaut auf demselben Stack, den wir für unsere gesamte Wahrnehmungs-Arbeit nutzen: PCL, Open3D, OpenCV, PyTorch. We keep the architecture boring on purpose. Three loosely coupled stages, each one independently testable, each one swappable when the sensor stack changes. Built on the same stack we use across all our perception work: PCL, Open3D, OpenCV, PyTorch. We keep the architecture boring on purpose. Three loosely coupled stages, each one independently testable, each one swappable when the sensor stack changes. Built on the same stack we use across all our perception work: PCL, Open3D, OpenCV, PyTorch. We keep the architecture boring on purpose. Three loosely coupled stages, each one independently testable, each one swappable when the sensor stack changes. Built on the same stack we use across all our perception work: PCL, Open3D, OpenCV, PyTorch. We keep the architecture boring on purpose. Three loosely coupled stages, each one independently testable, each one swappable when the sensor stack changes. Built on the same stack we use across all our perception work: PCL, Open3D, OpenCV, PyTorch.
The LiDAR delivers a 3D point cloud of the full truck load — typically a million-plus points per pass at portal speed. The camera adds a synchronised colour image, lens-calibrated and time-stamped. Raw data writes to local storage with a per-truck UUID for audit trail and re-labelling. Der LiDAR liefert eine 3D-Punktwolke der gesamten LKW-Ladung — typisch über eine Million Punkte pro Durchfahrt bei Portal-Geschwindigkeit. Die Kamera ergänzt ein synchronisiertes Farbbild, objektiv-kalibriert und zeit-gestempelt. Rohdaten schreiben auf lokalen Speicher mit pro-LKW-UUID für Audit-Trail und Re-Labelling. The LiDAR delivers a 3D point cloud of the full truck load — typically a million-plus points per pass at portal speed. The camera adds a synchronised colour image, lens-calibrated and time-stamped. Raw data writes to local storage with a per-truck UUID for audit trail and re-labelling. The LiDAR delivers a 3D point cloud of the full truck load — typically a million-plus points per pass at portal speed. The camera adds a synchronised colour image, lens-calibrated and time-stamped. Raw data writes to local storage with a per-truck UUID for audit trail and re-labelling. The LiDAR delivers a 3D point cloud of the full truck load — typically a million-plus points per pass at portal speed. The camera adds a synchronised colour image, lens-calibrated and time-stamped. Raw data writes to local storage with a per-truck UUID for audit trail and re-labelling. The LiDAR delivers a 3D point cloud of the full truck load — typically a million-plus points per pass at portal speed. The camera adds a synchronised colour image, lens-calibrated and time-stamped. Raw data writes to local storage with a per-truck UUID for audit trail and re-labelling.
The point cloud goes through ground removal, voxel down-sampling and a PointNet-style classifier trained on your scrap categories. The colour image goes through a CNN trained on the same labels. The two heads are fused into a single per-voxel prediction — typically 85–95% classification accuracy on production data, depending on how clean your scrap categories actually are. Die Punktwolke läuft durch Boden-Entfernung, Voxel-Downsampling und einen PointNet-artigen Klassifikator, trainiert auf Ihren Schrott-Kategorien. Das Farbbild läuft durch ein CNN, trainiert auf denselben Labels. Beide Köpfe werden zu einer voxel-weisen Vorhersage fusioniert — typisch 85–95 % Klassifikations-Genauigkeit auf Produktionsdaten, abhängig davon, wie sauber Ihre Schrott-Kategorien tatsächlich abgegrenzt sind. The point cloud goes through ground removal, voxel down-sampling and a PointNet-style classifier trained on your scrap categories. The colour image goes through a CNN trained on the same labels. The two heads are fused into a single per-voxel prediction — typically 85–95% classification accuracy on production data, depending on how clean your scrap categories actually are. The point cloud goes through ground removal, voxel down-sampling and a PointNet-style classifier trained on your scrap categories. The colour image goes through a CNN trained on the same labels. The two heads are fused into a single per-voxel prediction — typically 85–95% classification accuracy on production data, depending on how clean your scrap categories actually are. The point cloud goes through ground removal, voxel down-sampling and a PointNet-style classifier trained on your scrap categories. The colour image goes through a CNN trained on the same labels. The two heads are fused into a single per-voxel prediction — typically 85–95% classification accuracy on production data, depending on how clean your scrap categories actually are. The point cloud goes through ground removal, voxel down-sampling and a PointNet-style classifier trained on your scrap categories. The colour image goes through a CNN trained on the same labels. The two heads are fused into a single per-voxel prediction — typically 85–95% classification accuracy on production data, depending on how clean your scrap categories actually are.
Per-truck output: estimated tonnage per category, slag fraction, contamination flags, audit images. Writes into the EAF charge planner over OPC UA — or into the MES, the ERP, the yard-management system, whatever the plant already runs. The charge model now reads real category masses instead of operator estimates. Pro LKW: geschätzte Tonnage je Kategorie, Schlacke-Anteil, Kontaminations-Flags, Audit-Bilder. Schreibt in die EAF-Chargenplanung per OPC UA — oder ins MES, ERP, Hof-Management-System, was die Anlage eben hat. Das Chargenmodell liest jetzt echte Kategorie-Massen statt Bediener-Schätzungen. Per-truck output: estimated tonnage per category, slag fraction, contamination flags, audit images. Writes into the EAF charge planner over OPC UA — or into the MES, the ERP, the yard-management system, whatever the plant already runs. The charge model now reads real category masses instead of operator estimates. Per-truck output: estimated tonnage per category, slag fraction, contamination flags, audit images. Writes into the EAF charge planner over OPC UA — or into the MES, the ERP, the yard-management system, whatever the plant already runs. The charge model now reads real category masses instead of operator estimates. Per-truck output: estimated tonnage per category, slag fraction, contamination flags, audit images. Writes into the EAF charge planner over OPC UA — or into the MES, the ERP, the yard-management system, whatever the plant already runs. The charge model now reads real category masses instead of operator estimates. Per-truck output: estimated tonnage per category, slag fraction, contamination flags, audit images. Writes into the EAF charge planner over OPC UA — or into the MES, the ERP, the yard-management system, whatever the plant already runs. The charge model now reads real category masses instead of operator estimates.
All three stages run on an industrial PC at the portal cabinet. No cloud dependency, no external API, no licence dial-home. The code is yours at handover. Alle drei Stufen laufen auf einem Industrie-PC im Portal-Schaltschrank. Keine Cloud-Abhängigkeit, keine externe API, kein Lizenz-Heimruf. Der Code gehört Ihnen bei der Übergabe. All three stages run on an industrial PC at the portal cabinet. No cloud dependency, no external API, no licence dial-home. The code is yours at handover. All three stages run on an industrial PC at the portal cabinet. No cloud dependency, no external API, no licence dial-home. The code is yours at handover. All three stages run on an industrial PC at the portal cabinet. No cloud dependency, no external API, no licence dial-home. The code is yours at handover. All three stages run on an industrial PC at the portal cabinet. No cloud dependency, no external API, no licence dial-home. The code is yours at handover.
Every delivery gets a structured record: scrap-category mass breakdown, slag fraction, contamination flags, audit images, supplier ID, weighbridge ticket cross-link. Drops into the supplier-quality dashboard, into ERP, and into the yard-acceptance workflow. Jede Anlieferung erhält einen strukturierten Datensatz: Massen-Aufschlüsselung je Schrott-Kategorie, Schlacke-Anteil, Kontaminations-Flags, Audit-Bilder, Lieferanten-ID, Querverweis auf den Waage-Ticket. Geht ins Lieferanten-Qualitäts-Dashboard, ins ERP und in den Hof-Annahme-Workflow. Every delivery gets a structured record: scrap-category mass breakdown, slag fraction, contamination flags, audit images, supplier ID, weighbridge ticket cross-link. Drops into the supplier-quality dashboard, into ERP, and into the yard-acceptance workflow. Every delivery gets a structured record: scrap-category mass breakdown, slag fraction, contamination flags, audit images, supplier ID, weighbridge ticket cross-link. Drops into the supplier-quality dashboard, into ERP, and into the yard-acceptance workflow. Every delivery gets a structured record: scrap-category mass breakdown, slag fraction, contamination flags, audit images, supplier ID, weighbridge ticket cross-link. Drops into the supplier-quality dashboard, into ERP, and into the yard-acceptance workflow. Every delivery gets a structured record: scrap-category mass breakdown, slag fraction, contamination flags, audit images, supplier ID, weighbridge ticket cross-link. Drops into the supplier-quality dashboard, into ERP, and into the yard-acceptance workflow.
Across many trucks, the yard accumulates an aging map: which bay holds which scrap mix, how long it has sat, how much slag contamination is sitting in each pile. Same temporal model we use on stockpile monitoring — applied to scrap categories. Über viele LKW hinweg entsteht auf dem Hof eine Alterungs-Karte: welche Box welchen Schrott-Mix hält, wie lange er liegt, wie viel Schlacke-Kontamination in welcher Halde sitzt. Dasselbe zeitliche Modell, das wir auf Halden-Monitoring einsetzen — übertragen auf Schrott-Kategorien. Across many trucks, the yard accumulates an aging map: which bay holds which scrap mix, how long it has sat, how much slag contamination is sitting in each pile. Same temporal model we use on stockpile monitoring — applied to scrap categories. Across many trucks, the yard accumulates an aging map: which bay holds which scrap mix, how long it has sat, how much slag contamination is sitting in each pile. Same temporal model we use on stockpile monitoring — applied to scrap categories. Across many trucks, the yard accumulates an aging map: which bay holds which scrap mix, how long it has sat, how much slag contamination is sitting in each pile. Same temporal model we use on stockpile monitoring — applied to scrap categories. Across many trucks, the yard accumulates an aging map: which bay holds which scrap mix, how long it has sat, how much slag contamination is sitting in each pile. Same temporal model we use on stockpile monitoring — applied to scrap categories.
For every planned heat, the system proposes a charge mix that hits the target chemistry within typical fines and slag tolerances — drawing from real yard inventory instead of assumed averages. The metallurgist still approves; the planner does the bookkeeping. Für jedes geplante Heat schlägt das System eine Mischung vor, die die Ziel-Chemie innerhalb typischer Feinanteil- und Schlacke-Toleranzen trifft — gezogen aus dem realen Hof-Bestand statt aus angenommenen Mittelwerten. Der Metallurg gibt frei; der Planer macht die Buchhaltung. For every planned heat, the system proposes a charge mix that hits the target chemistry within typical fines and slag tolerances — drawing from real yard inventory instead of assumed averages. The metallurgist still approves; the planner does the bookkeeping. For every planned heat, the system proposes a charge mix that hits the target chemistry within typical fines and slag tolerances — drawing from real yard inventory instead of assumed averages. The metallurgist still approves; the planner does the bookkeeping. For every planned heat, the system proposes a charge mix that hits the target chemistry within typical fines and slag tolerances — drawing from real yard inventory instead of assumed averages. The metallurgist still approves; the planner does the bookkeeping. For every planned heat, the system proposes a charge mix that hits the target chemistry within typical fines and slag tolerances — drawing from real yard inventory instead of assumed averages. The metallurgist still approves; the planner does the bookkeeping.
Every steel mill has its own scrap sources, its own EAF charge model and its own existing yard sensors. A generic classifier solves the generic case; your case is not the generic case. Jedes Stahlwerk hat eigene Schrott-Quellen, ein eigenes EAF-Chargenmodell und eigene bestehende Hof-Sensorik. Ein generischer Klassifikator löst den generischen Fall; Ihr Fall ist nicht der generische Fall. Every steel mill has its own scrap sources, its own EAF charge model and its own existing yard sensors. A generic classifier solves the generic case; your case is not the generic case. Every steel mill has its own scrap sources, its own EAF charge model and its own existing yard sensors. A generic classifier solves the generic case; your case is not the generic case. Every steel mill has its own scrap sources, its own EAF charge model and its own existing yard sensors. A generic classifier solves the generic case; your case is not the generic case. Every steel mill has its own scrap sources, its own EAF charge model and its own existing yard sensors. A generic classifier solves the generic case; your case is not the generic case.
A shred pile in one mill looks different from a shred pile in another — different shredder, different feedstock, different oxidation history. We calibrate the model on your material under your lighting and dust conditions, and we re-calibrate when the supplier mix changes. Eine Schredder-Halde sieht in einem Werk anders aus als im nächsten — anderer Schredder, anderes Vormaterial, andere Oxidations-Geschichte. Wir kalibrieren das Modell auf Ihrem Material unter Ihrem Licht und Staub — und wir re-kalibrieren, wenn sich der Lieferanten-Mix ändert. A shred pile in one mill looks different from a shred pile in another — different shredder, different feedstock, different oxidation history. We calibrate the model on your material under your lighting and dust conditions, and we re-calibrate when the supplier mix changes. A shred pile in one mill looks different from a shred pile in another — different shredder, different feedstock, different oxidation history. We calibrate the model on your material under your lighting and dust conditions, and we re-calibrate when the supplier mix changes. A shred pile in one mill looks different from a shred pile in another — different shredder, different feedstock, different oxidation history. We calibrate the model on your material under your lighting and dust conditions, and we re-calibrate when the supplier mix changes. A shred pile in one mill looks different from a shred pile in another — different shredder, different feedstock, different oxidation history. We calibrate the model on your material under your lighting and dust conditions, and we re-calibrate when the supplier mix changes.
We bring the labelling tooling and the engineering hours. You bring the operator who actually knows what's in each truck. The result is a labelled dataset that belongs to you and that you can keep using as the model evolves — no vendor lock-in on the training data. Wir bringen das Labelling-Tooling und die Engineering-Stunden. Sie stellen den Bediener, der tatsächlich weiß, was in jedem LKW war. Das Ergebnis ist ein gelabelter Datensatz, der Ihnen gehört und den Sie weiterverwenden, wenn sich das Modell weiterentwickelt — kein Vendor-Lock-in auf Trainingsdaten. We bring the labelling tooling and the engineering hours. You bring the operator who actually knows what's in each truck. The result is a labelled dataset that belongs to you and that you can keep using as the model evolves — no vendor lock-in on the training data. We bring the labelling tooling and the engineering hours. You bring the operator who actually knows what's in each truck. The result is a labelled dataset that belongs to you and that you can keep using as the model evolves — no vendor lock-in on the training data. We bring the labelling tooling and the engineering hours. You bring the operator who actually knows what's in each truck. The result is a labelled dataset that belongs to you and that you can keep using as the model evolves — no vendor lock-in on the training data. We bring the labelling tooling and the engineering hours. You bring the operator who actually knows what's in each truck. The result is a labelled dataset that belongs to you and that you can keep using as the model evolves — no vendor lock-in on the training data.
Most steel-mill yards already have weighbridges, RFID gates, ANPR cameras and overhead cranes. We fuse the classification output into what's already there — we do not replace your yard-management system. OPC UA, REST, MQTT and analog outputs all supported. Die meisten Stahlwerks-Höfe haben bereits Waagen, RFID-Tore, ANPR-Kameras und Hallenkrane. Wir fusionieren die Klassifikation in das, was schon da ist — wir ersetzen Ihr Hof-Management nicht. OPC UA, REST, MQTT und Analog-Ausgänge — alles unterstützt. Most steel-mill yards already have weighbridges, RFID gates, ANPR cameras and overhead cranes. We fuse the classification output into what's already there — we do not replace your yard-management system. OPC UA, REST, MQTT and analog outputs all supported. Most steel-mill yards already have weighbridges, RFID gates, ANPR cameras and overhead cranes. We fuse the classification output into what's already there — we do not replace your yard-management system. OPC UA, REST, MQTT and analog outputs all supported. Most steel-mill yards already have weighbridges, RFID gates, ANPR cameras and overhead cranes. We fuse the classification output into what's already there — we do not replace your yard-management system. OPC UA, REST, MQTT and analog outputs all supported. Most steel-mill yards already have weighbridges, RFID gates, ANPR cameras and overhead cranes. We fuse the classification output into what's already there — we do not replace your yard-management system. OPC UA, REST, MQTT and analog outputs all supported.
You own the source code, the model weights and the labelled dataset at handover. We document the system, train your team, and walk away clean. No black box, no monthly per-truck licence, no service contract you can't exit. See our FAQs on IP and engagement model for the standard terms. Sie besitzen Quellcode, Modell-Gewichte und gelabelten Datensatz nach der Übergabe. Wir dokumentieren das System, schulen Ihr Team und gehen sauber raus. Keine Black Box, keine monatliche Pro-LKW-Lizenz, kein Servicevertrag, aus dem Sie nicht rauskommen. Standard-Bedingungen siehe unsere FAQs zu IP und Zusammenarbeits-Modell. You own the source code, the model weights and the labelled dataset at handover. We document the system, train your team, and walk away clean. No black box, no monthly per-truck licence, no service contract you can't exit. See our FAQs on IP and engagement model for the standard terms. You own the source code, the model weights and the labelled dataset at handover. We document the system, train your team, and walk away clean. No black box, no monthly per-truck licence, no service contract you can't exit. See our FAQs on IP and engagement model for the standard terms. You own the source code, the model weights and the labelled dataset at handover. We document the system, train your team, and walk away clean. No black box, no monthly per-truck licence, no service contract you can't exit. See our FAQs on IP and engagement model for the standard terms. You own the source code, the model weights and the labelled dataset at handover. We document the system, train your team, and walk away clean. No black box, no monthly per-truck licence, no service contract you can't exit. See our FAQs on IP and engagement model for the standard terms.
The engagement-model questions we hear from every steel-mill customer considering a custom perception build. Need something more specific to your yard? Ask us. Die Fragen zum Zusammenarbeits-Modell, die wir von jedem Stahlwerks-Kunden hören, der einen Custom-Perception-Build erwägt. Brauchen Sie etwas Spezifischeres zu Ihrem Hof? Sprechen Sie uns an. The engagement-model questions we hear from every steel-mill customer considering a custom perception build. Need something more specific to your yard? Ask us. The engagement-model questions we hear from every steel-mill customer considering a custom perception build. Need something more specific to your yard? Ask us. The engagement-model questions we hear from every steel-mill customer considering a custom perception build. Need something more specific to your yard? Ask us. The engagement-model questions we hear from every steel-mill customer considering a custom perception build. Need something more specific to your yard? Ask us.
Sensor setup, sample point clouds, your scrap categories, your charge-planner interface — anything you have. We come back within two business days with an honest first assessment and a fixed-price scope for the Discovery workshop. Sensor-Setup, Beispiel-Punktwolken, Ihre Schrott-Kategorien, Ihre Chargenplanungs-Schnittstelle — alles, was Sie haben. Wir kommen innerhalb von zwei Werktagen mit einer ehrlichen ersten Einschätzung und einem Festpreis-Angebot für den Discovery-Workshop zurück. Sensor setup, sample point clouds, your scrap categories, your charge-planner interface — anything you have. We come back within two business days with an honest first assessment and a fixed-price scope for the Discovery workshop. Sensor setup, sample point clouds, your scrap categories, your charge-planner interface — anything you have. We come back within two business days with an honest first assessment and a fixed-price scope for the Discovery workshop. Sensor setup, sample point clouds, your scrap categories, your charge-planner interface — anything you have. We come back within two business days with an honest first assessment and a fixed-price scope for the Discovery workshop. Sensor setup, sample point clouds, your scrap categories, your charge-planner interface — anything you have. We come back within two business days with an honest first assessment and a fixed-price scope for the Discovery workshop.