SegICP: Integrated Deep Semantic Segmentation and Pose Estimation

2017 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)(2017)

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摘要
Recent robotic manipulation competitions have highlighted that sophisticated robots still struggle to achieve fast and reliable perception of task-relevant objects in complex, realistic scenarios. To improve these systems' perceptive speed and robustness, we present SegICP, a novel integrated solution to object recognition and pose estimation. SegICP couples convolutional neural networks and multi-hypothesis point cloud registration to achieve both robust pixel-wise semantic segmentation as well as accurate and real-time 6-DOF pose estimation for relevant objects. Our architecture achieves 1cm position error and <5^\circ$ angle error in real time without an initial seed. We evaluate and benchmark SegICP against an annotated dataset generated by motion capture.
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关键词
object recognition,real-time 6-DOF pose estimation,robotic manipulation competitions,multi-hypothesis point cloud registration,SegICP,task-relevant objects,sophisticated robots,deep semantic segmentation,robust pixel-wise semantic segmentation,convolutional neural networks
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