Electronics, Vol. 13, Pages 1321: A Lightweight 6D Pose Estimation Network Based on Improved Atrous Spatial Pyramid Pooling

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Electronics, Vol. 13, Pages 1321: A Lightweight 6D Pose Estimation Network Based on Improved Atrous Spatial Pyramid Pooling

Electronics doi: 10.3390/electronics13071321

Authors: Fupan Wang Xiaohang Tang Yadong Wu Yinfan Wang Huarong Chen Guijuan Wang Jing Liao

It is difficult for lightweight neural networks to produce accurate 6DoF pose estimation effects due to their accuracy being affected by scale changes. To solve this problem, we propose a method with good performance and robustness based on previous research. The enhanced PVNet-based method uses depth-wise convolution to build a lightweight network. In addition, coordinate attention and atrous spatial pyramid pooling are used to ensure accuracy and robustness. This method effectively reduces the network size and computational complexity and is a lightweight 6DoF pose estimation method based on monocular RGB images. Experiments on public datasets and self-built datasets show that the average ADD(-S) estimation accuracy and 2D projection index of the improved method are improved. For datasets with large changes in object scale, the estimation accuracy of the average ADD(-S) is greatly improved.

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