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Occlusion Resistant Object Rotation Regression from Point Cloud Segments

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arxiv 1808.05498 v2 pith:6XCKTGEO submitted 2018-08-16 cs.CV

Occlusion Resistant Object Rotation Regression from Point Cloud Segments

classification cs.CV
keywords methodobjectpointrotationcloudestimationocclusionpose
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Rotation estimation of known rigid objects is important for robotic applications such as dexterous manipulation. Most existing methods for rotation estimation use intermediate representations such as templates, global or local feature descriptors, or object coordinates, which require multiple steps in order to infer the object pose. We propose to directly regress a pose vector from raw point cloud segments using a convolutional neural network. Experimental results show that our method can potentially achieve competitive performance compared to a state-of-the-art method, while also showing more robustness against occlusion. Our method does not require any post processing such as refinement with the iterative closest point algorithm.

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