基于块处理的自适应harris角点检测算法

S. Shen, Xiaolong Zhang, W. Heng
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引用次数: 13

摘要

为了消除Harris角点检测算法中存在的假角点提取和真实角点信息丢失的问题,以及在处理所有图像的非最大抑制中难以找到通用阈值的问题,本文引入了自适应阈值,以生成更精确的角点。此外,提出了一种分块处理方法,将图像分成若干块,每个块独立处理,保证检测到的角点在图像中均匀分布而不聚类,从而消除了由于图像不同部分灰度对比强烈而丢失部分角点的可能性。实验结果表明,改进后的算法在检测角点分布的准确性和均匀性方面都优于传统方法和以前的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Auto-adaptive harris corner detection algorithm based on block processing
To eliminate the problems of extracting false corners and losing information of real corners and overcome the difficulty in finding a universal threshold in the non-maximal inhibition for the processing of all pictures in the Harris corner detection algorithm, an auto-adaptive threshold is introduced in this paper in order to generate more accurate corners. In addition, a method of block processing to divide an image into several blocks and process each block independently is proposed to ensure that the corners detected are evenly distributed in the image without clustering and thus eliminate the possibility that some corners may be lost because of the sharp contrast in gray scale in different parts of the image. Experimental results showed that this improved algorithm outperformed traditional and previous methods both in accuracy and evenness of distribution of detected corners.
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