UNSUPERVISED OBJECT DETECTION FROM LIDAR POINT CLOUDS

Unsupervised object detection from lidar point clouds includes forecasting a set of new positions of a set of objects in a geographic region based on a first set of object tracks to obtain a set of forecasted object positions, and obtaining a new LiDAR point cloud of the geographic region. A detecto...

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Hauptverfasser: CASAS ROMERO, Sergio, REN, Mengye, ZHANG, Lunjun, XIONG, Yuwen, URTASUN, Raquel, YANG, Angi Joyce
Format: Patent
Sprache:eng
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Zusammenfassung:Unsupervised object detection from lidar point clouds includes forecasting a set of new positions of a set of objects in a geographic region based on a first set of object tracks to obtain a set of forecasted object positions, and obtaining a new LiDAR point cloud of the geographic region. A detector model processes the new LiDAR point cloud to obtain a new set of bounding boxes around the set of objects detected in the new LiDAR point cloud. Object detection further includes matching the new set of bounding boxes to the set of forecasted object positions to generate a set of matches, updating the first set of object tracks with the new set of bounding boxes according to the set of matches to obtain an updated set of object tracks, and filtering, after updating, the updated set of object tracks to remove object tracks failing to satisfy a track length threshold, to generate a training set of object tracks. The object detection further includes selecting at least a subset of the new set of bounding boxes that are in the training set of object tracks, and retraining the detector model using the at least the subset of the new set of bounding boxes.