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Main Authors: Shi, Jun, A, Yong, Jin, Yixiang, Li, Dingzhe, Niu, Haoyu, Jin, Zhezhu, Wang, He
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2405.05648
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author Shi, Jun
A, Yong
Jin, Yixiang
Li, Dingzhe
Niu, Haoyu
Jin, Zhezhu
Wang, He
author_facet Shi, Jun
A, Yong
Jin, Yixiang
Li, Dingzhe
Niu, Haoyu
Jin, Zhezhu
Wang, He
contents In this paper, we tackle the problem of grasping transparent and specular objects. This issue holds importance, yet it remains unsolved within the field of robotics due to failure of recover their accurate geometry by depth cameras. For the first time, we propose ASGrasp, a 6-DoF grasp detection network that uses an RGB-D active stereo camera. ASGrasp utilizes a two-layer learning-based stereo network for the purpose of transparent object reconstruction, enabling material-agnostic object grasping in cluttered environments. In contrast to existing RGB-D based grasp detection methods, which heavily depend on depth restoration networks and the quality of depth maps generated by depth cameras, our system distinguishes itself by its ability to directly utilize raw IR and RGB images for transparent object geometry reconstruction. We create an extensive synthetic dataset through domain randomization, which is based on GraspNet-1Billion. Our experiments demonstrate that ASGrasp can achieve over 90% success rate for generalizable transparent object grasping in both simulation and the real via seamless sim-to-real transfer. Our method significantly outperforms SOTA networks and even surpasses the performance upper bound set by perfect visible point cloud inputs.Project page: https://pku-epic.github.io/ASGrasp
format Preprint
id arxiv_https___arxiv_org_abs_2405_05648
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle ASGrasp: Generalizable Transparent Object Reconstruction and 6-DoF Grasp Detection from RGB-D Active Stereo Camera
Shi, Jun
A, Yong
Jin, Yixiang
Li, Dingzhe
Niu, Haoyu
Jin, Zhezhu
Wang, He
Robotics
Computer Vision and Pattern Recognition
In this paper, we tackle the problem of grasping transparent and specular objects. This issue holds importance, yet it remains unsolved within the field of robotics due to failure of recover their accurate geometry by depth cameras. For the first time, we propose ASGrasp, a 6-DoF grasp detection network that uses an RGB-D active stereo camera. ASGrasp utilizes a two-layer learning-based stereo network for the purpose of transparent object reconstruction, enabling material-agnostic object grasping in cluttered environments. In contrast to existing RGB-D based grasp detection methods, which heavily depend on depth restoration networks and the quality of depth maps generated by depth cameras, our system distinguishes itself by its ability to directly utilize raw IR and RGB images for transparent object geometry reconstruction. We create an extensive synthetic dataset through domain randomization, which is based on GraspNet-1Billion. Our experiments demonstrate that ASGrasp can achieve over 90% success rate for generalizable transparent object grasping in both simulation and the real via seamless sim-to-real transfer. Our method significantly outperforms SOTA networks and even surpasses the performance upper bound set by perfect visible point cloud inputs.Project page: https://pku-epic.github.io/ASGrasp
title ASGrasp: Generalizable Transparent Object Reconstruction and 6-DoF Grasp Detection from RGB-D Active Stereo Camera
topic Robotics
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2405.05648