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Exploiting Point-Wise Attention in 6D Object Pose Estimation Based on Bidirectional Prediction

Yuhao Yang, Jun Wu, Yue Wang, Mr Zhang Guangjian, Rong Xiong

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Abstract

Traditional geometric registration based estima- tion methods only exploit the CAD model implicitly, which leads to their dependence on observation quality and deficiency to occlusion.To address the problem,the paper proposes a bidi- rectional correspondence prediction network with a point-wise attention-aware mechanism. This network not only requires the model points to predict the correspondence but also explicitly models the geometric similarities between observations and the model prior. Our key insight is that the correlations between each model point and scene point provide essential information for learning point-pair matches. To further tackle the correlation noises brought by feature distribution diver- gence, we design a simple but effective pseudo-siamese network to improve feature homogeneity. Experimental results on the public datasets of LineMOD, YCB-Video, and Occ-LineMOD show that the proposed method achieves better performance than other state-of-the-art methods under the same evaluation criteria. Its robustness in estimating poses is greatly improved, especially in an environment with severe occlusions.

Index terms

RGB-D Perception Deep Learning for Visual Perception