触觉物体形状识别的迭代最近标记点

Shan Luo, Wenxuan Mou, K. Althoefer, Hongbin Liu
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引用次数: 42

摘要

在机器人物体识别中,触觉数据和运动感知线索是两种重要的感知源,它们是相辅相成的。在本文中,我们提出了一种新的算法,称为迭代最近标记点(iCLAP),以同时使用触觉和动觉信息来识别物体。iCLAP首先用不同的标签编号分配不同的局部触觉特征。触觉特征的标签号及其相关的3D位置形成物体的4D点云。以这种方式,两种传感模式被合并以形成对被触摸物体的综合感知。为了识别目标,通过多次触摸获得的局部四维点云与所有参考云模型迭代匹配,以确定最佳拟合。一项针对20个真实物体的广泛评估研究表明,我们提出的iCLAP方法优于使用任何一种单独传感模式的方法,识别率提高了18%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Iterative Closest Labeled Point for tactile object shape recognition
Tactile data and kinesthetic cues are two important sensing sources in robot object recognition and are complementary to each other. In this paper, we propose a novel algorithm named Iterative Closest Labeled Point (iCLAP) to recognize objects using both tactile and kinesthetic information. The iCLAP first assigns different local tactile features with distinct label numbers. The label numbers of the tactile features together with their associated 3D positions form a 4D point cloud of the object. In this manner, the two sensing modalities are merged to form a synthesized perception of the touched object. To recognize an object, the partial 4D point cloud obtained from a number of touches iteratively matches with all the reference cloud models to identify the best fit. An extensive evaluation study with 20 real objects shows that our proposed iCLAP approach outperforms those using either of the separate sensing modalities, with a substantial recognition rate improvement of up to 18%.
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