Region Feature Descriptor Adapted to High Affine Transformations

ArXiv Pub Date : 2024-02-15 DOI:10.48550/arXiv.2402.09724
Shaojie Zhang, Yinghui Wang, Peixuan Liu, Jinlong Yang, Tao Yan, Liangyi Huang, Mingfeng Wang
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Abstract

To address the issue of feature descriptors being ineffective in representing grayscale feature information when images undergo high affine transformations, leading to a rapid decline in feature matching accuracy, this paper proposes a region feature descriptor based on simulating affine transformations using classification. The proposed method initially categorizes images with different affine degrees to simulate affine transformations and generate a new set of images. Subsequently, it calculates neighborhood information for feature points on this new image set. Finally, the descriptor is generated by combining the grayscale histogram of the maximum stable extremal region to which the feature point belongs and the normalized position relative to the grayscale centroid of the feature point's region. Experimental results, comparing feature matching metrics under affine transformation scenarios, demonstrate that the proposed descriptor exhibits higher precision and robustness compared to existing classical descriptors. Additionally, it shows robustness when integrated with other descriptors.
适应高仿射变换的区域特征描述符
针对图像发生高仿射变换时,特征描述器无法有效表示灰度特征信息,导致特征匹配准确率迅速下降的问题,本文提出了一种基于模拟仿射变换的分类区域特征描述器。该方法首先对不同仿射度的图像进行分类,模拟仿射变换并生成一组新的图像。然后,计算新图像集上特征点的邻域信息。最后,结合特征点所属最大稳定极值区域的灰度直方图和相对于特征点区域灰度中心点的归一化位置,生成描述符。通过比较仿射变换情况下的特征匹配度量,实验结果表明,与现有的经典描述符相比,所提出的描述符具有更高的精度和鲁棒性。此外,当与其他描述符集成时,它还表现出了鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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