Publication | Closed Access
MVTrans: Multi-View Perception of Transparent Objects
26
Citations
25
References
2023
Year
Unknown Venue
Robot Manipulation3D Computer VisionTransparent ObjectsMachine VisionMachine LearningImage AnalysisEngineering3D VisionScene UnderstandingExtended RealityUnreliable Depth MapDepth MapScene ModelingRobot LearningDeep Learning3D Object RecognitionComputer VisionTransparent Object Perception
Transparent object perception is a crucial skill for applications such as robot manipulation in household and laboratory settings. Existing methods utilize RGB-D or stereo inputs to handle a subset of perception tasks including depth and pose estimation. However transparent object perception remains to be an open problem. In this paper, we forgo the unreliable depth map from RGB-D sensors and extend the stereo based method. Our proposed method, MVTrans, is an end-to-end multi-view architecture with multiple perception capabilities, including depth estimation, segmentation, and pose estimation. Additionally, we establish a novel procedural photo-realistic dataset generation pipeline and create a large-scale transparent object detection dataset, Syn-TODD, which is suitable for training networks with all three modalities, RGB-D, stereo and multi-view RGB. https://ac-rad.github.io/MVTrans/
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