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Selective Embedding with Gated Fusion for 6D Object Pose Estimation

机译:使用Gated Fusion选择嵌入6D对象姿态估计

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摘要

Deep learning method for 6D object pose estimation based on RGB image and depth (RGB-D) has been successfully applied to robot grasping. The fusion of RGB and depth is one of the most important difficulties. Previous works on the fusion of these two features are mostly concatenated together without considering the different contributions of the two types of features to pose estimation. We propose a selective embedding with gated fusion structure called SEGate, which can adjust the weights of RGB and depth features adaptively. Furthermore, we aggregate the local features of point clouds according to the distance between them. More specifically, the close point clouds contribute a lot to local features, while the distant point clouds contribute a little. Experiments show that our approach achieves the state-of-art performance in both LineMOD and YCB-Video datasets. Meanwhile, our approach is more robust to the pose estimation of occluded objects.
机译:基于RGB图像和深度(RGB-D)的6D对象姿势估计的深度学习方法已成功应用于机器人抓取。 RGB和深度的融合是最重要的困难之一。以前的作品在这两个特征的融合中主要被连接在一起,而不考虑两种类型的特征来姿态估计的不同贡献。我们提出了一种选择性嵌入与Segate的门控融合结构嵌入,可以自适应地调整RGB和深度特征的重量。此外,我们根据它们之间的距离聚合点云的本地特征。更具体地说,近点云对本地特征有很大贡献,而遥远的点云贡献一点。实验表明,我们的方法在LineMod和YCB-Video数据集中实现了最先进的性能。同时,我们的方法对遮挡物体的姿势估计更加强大。

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