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Maximally Stable Local Description for Scale Selection

机译:标尺选择的最大稳定本地描述

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摘要

Scale and affine-invariant local features have shown excellent performance in image matching, object and texture recognition. This paper optimizes keypoint detection to achieve stable local descriptors, and therefore, an improved image representation. The technique performs scale selection based on a region descriptor, here SIFT, and chooses regions for which this descriptor is maximally stable. Maximal stability is obtained, when the difference between descriptors extracted for consecutive scales reaches a minimum. This scale selection technique is applied to multi-scale Harris and Laplacian points. Affine invariance is achieved by an integrated affine adaptation process based on the second moment matrix. An experimental evaluation compares our detectors to Harris-Laplace and the Laplacian in the context of image matching as well as of category and texture classification. The comparison shows the improved performance of our detector.
机译:比例和仿射不变的局部特征在图像匹配,物体和纹理识别方面显示出出色的性能。本文优化了关键点检测以实现稳定的局部描述符,因此改进了图像表示。该技术基于区域描述符(此处为SIFT)执行尺度选择,并选择该描述符对其最大稳定的区域。当为连续尺度提取的描述符之间的差异达到最小值时,可获得最大的稳定性。此标尺选择技术应用于多标度的Harris和Laplacian点。仿射不变性是通过基于第二矩矩阵的集成仿射适应过程实现的。实验评估在图像匹配以及类别和纹理分类的背景下将我们的检测器与Harris-Laplace和Laplacian进行了比较。对比显示了我们检测器的性能提高。

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