使用余弦相似度量进行视觉伺服

Wenbo Ning, Yecan Yin, Xiangfei Li, Huan Zhao, Yunfeng Fu, Han Ding
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引用次数: 0

摘要

本文提出了一种基于余弦相似度的新型视觉舵机控制方法,该方法主要利用余弦相似度定义的余弦距离作为基于直方图的直接视觉舵机控制(HDVS)的优化目标,从而设计舵机控制法则。与直接使用图像强度相比,直方图作为一种更紧凑的全局描述符,使直接视觉舵机具有更强的抗噪能力。余弦相似度是两个向量之间的余弦值,被广泛用于计算多维信息之间的相似度。由余弦相似度推导出的余弦距离对直方图之间的方向差异更为敏感,因此与现有的基于 Matusita 距离的伺服方法相比,所提出的方法具有更大的收敛率。模拟验证了这一优势,并在机械手上进行了实验,进一步验证了所提方法在实际情况中的有效性。
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Visual Servoing Using Cosine Similarity Metric
This article presents a new visual servoing method based on cosine similarity metric, which focuses on utilizing cosine distance defined by cosine similarity as the optimization objective of histogram-based direct visual servoing (HDVS) to design the servoing control law. As a more compact global descriptor, the histogram makes direct visual servoing more robust against noise than directly using image intensity. Cosine similarity is the cosine value between two vectors, which has been widely employed to calculate the similarity between multidimensional information. The cosine distance derived from the cosine similarity is more sensitive to the directional difference between the histograms, making the proposed method have a larger convergence rate than the existing Matusita distance-based servoing method. This advantage is verified by simulations, and experiments are conducted on a manipulator to further verify the effectiveness of the proposed method in practical situations.
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