Image matching based on orientation–magnitude histograms and global consistency

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摘要

A novel image matching method based on the gradient space is proposed. Image pyramid combined with the Hessian matrix is used to detect scale-invariant interesting points. A new descriptor i.e. an orientation–magnitude histogram is introduced to describe the image content around an interesting point. The proposed local descriptor is proved to be invariant to image rotation. Since the matching result based on the similarities of the descriptors of interesting points always contains outliers, a steepest descent method that optimizes the global consistency of interesting points is presented to remove false matches. The experiments show that the proposed approach is invariant to rotation and scale, robust to the variation of focal lengths, illumination change, occlusion, noises and image blur. Our approach shows better performance than SIFT on multi-view and affine-transformation images. The application of the proposed method to image registration exhibits a good result.

论文关键词:Image matching,Orientation–magnitude histogram,Global consistency,Steepest descent method

论文评审过程:Received 29 May 2011, Revised 17 March 2012, Accepted 29 March 2012, Available online 19 April 2012.

论文官网地址:https://doi.org/10.1016/j.patcog.2012.03.026