Point cloud objective recognition method combining SHOT features and ESF features

Junfeng Ding, Hao Chen, Jian Zhou, Deyong Wu, Xuan Chen, Lei Wang
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引用次数: 0

Abstract

During the process of obtaining a point cloud, various problems, such as noise, occlusion, and incompleteness, will affect the recognition accuracy of the object. This paper proposes a point cloud 3D object recognition method combining SHOT features and ESF features to identify the objects in complex point cloud scenes accurately. The model is recognized based on the template matching method. According to the corresponding group and Hough voting method, we can determine the matching key points and the global features are calculated based on the rotation invariance characteristic of point clouds. The experiments show that the proposed method is, on average, 15% more accurate than traditional feature descriptor based on identification methods, and our approach also presents better robustness to noise.
结合SHOT特征和ESF特征的点云目标识别方法
在获取点云的过程中,噪声、遮挡、不完整性等各种问题都会影响目标的识别精度。本文提出了一种结合SHOT特征和ESF特征的点云三维目标识别方法,以准确识别复杂点云场景中的目标。基于模板匹配方法对模型进行识别。根据相应的分组和霍夫投票法确定匹配关键点,并根据点云的旋转不变性特征计算全局特征。实验表明,与传统的基于特征描述符的识别方法相比,该方法的准确率平均提高了15%,并且对噪声具有更好的鲁棒性。
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