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Wavelet-based corner detection using eigenvectors of covariance matrices

机译:使用协方差矩阵特征向量的基于小波的角点检测

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摘要

The proposed approach in this paper is to detect true corners and avoid false alarms on circular arcs by using the eigenvectors of covariance matrices and one-dimensional wavelet transform (1-D WT). The 2-D boundaries of an object are initially represented by the 1-D tangent angles calculated by the eigenvectors of covariance matrix from the boundary points coordinates over a small boundary segment. Since true corners result in stronger tangent variations, 1-D WT can be utilized to decompose the 1-D tangent angles and capture the irregular angle variations. In this manner, the locations of true corners can be easily identified by comparing the 1-D WT wavelet coefficients at high-pass decomposition levels with a pre-defined threshold. Experimental results show that the proposed method is invariant to rotation and scale under appropriate image resolution and adequate region of support for covariance matrices.
机译:本文提出的方法是通过使用协方差矩阵的特征向量和一维小波变换(1-D WT)检测圆弧的真角并避免误报。物体的二维边界最初由一维切线角表示,该一维切线角由协方差矩阵的特征向量从小边界段上的边界点坐标计算而来。由于真实的角会导致更强的切线变化,因此1-D WT可用于分解1-D切线角度并捕获不规则的角度变化。以这种方式,通过将高通分解级别的一维小波系数与预定阈值进行比较,可以轻松地确定真实拐角的位置。实验结果表明,在适当的图像分辨率和足够的协方差矩阵支持区域下,该方法不变。

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