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Keypoint Cascade Voting for Point Cloud Based 6DoF Pose Estimation | IEEE Conference Publication | IEEE Xplore

Keypoint Cascade Voting for Point Cloud Based 6DoF Pose Estimation


Abstract:

We propose a novel keypoint voting 6DoF object pose estimation method, which takes pure unordered point cloud geometry as input without RGB information. The proposed casc...Show More

Abstract:

We propose a novel keypoint voting 6DoF object pose estimation method, which takes pure unordered point cloud geometry as input without RGB information. The proposed cascaded keypoint voting method, called RCVPose3D, is based upon a novel architecture which separates the task of semantic segmentation from that of keypoint regression, thereby increasing the effectiveness of both and improving the ultimate performance. The method also introduces a pairwise constraint in between different keypoints to the loss function when regressing the quantity for keypoint estimation, which is shown to be effective, as well as a novel Voter Confident Score which enhances both the learning and inference stages. Our proposed RCVPose3D achieves state-of-the-art performance on the Occlusion LINEMOD (74.5%) and YCB-Video (96.9%) datasets, outperforming existing pure RGB and RGB-D based methods, as well as being competitive with RGB plus point cloud methods.
Date of Conference: 12-16 September 2022
Date Added to IEEE Xplore: 22 February 2023
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Conference Location: Prague, Czech Republic

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