Canny edge detection on a virtual hexagonal image structure

Xiangjian He, Jianmin Li, Daming Wei, W. Jia, Qiang Wu
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引用次数: 16

Abstract

Canny edge detector is the most popular tool for edge detection and has many applications in the areas of image processing, multimedia and computer vision. The Canny algorithm optimizes the edge detection through noise filtering using an optimal function approximated by the first derivative of a Gaussian. It identifies the edge points by computing the gradients of light intensity function based on the fact that the edge points likely appear where the gradient magnitudes are large. Hexagonal structure is an image structure alternative to traditional square image structure. Because all the existing hardware for capturing image and for displaying image are produced based on square structure, an approach that uses linear interpolation described for conversion between square and hexagonal structures. Gaussian filtering together with gradient computation is performed on the hexagonal structure. The pixel edge strengths on the square structure are then estimated before the thresholds of Canny algorithm are applied to determine the final edge map. The experimental results show the edge detection on hexagonal structure using static and video images, and the comparison with the results using Canny algorithm on square structure.
基于虚拟六边形图像结构的边缘检测
Canny边缘检测器是目前最流行的边缘检测工具,在图像处理、多媒体和计算机视觉等领域有着广泛的应用。Canny算法利用高斯一阶导数近似的最优函数,通过噪声滤波优化边缘检测。它根据光强函数的梯度可能出现在梯度值较大的地方,通过计算光强函数的梯度来识别边缘点。六边形结构是一种替代传统方形结构的图像结构。由于现有的图像采集和显示硬件都是基于方形结构,本文提出了一种利用线性插值的方法来实现方形和六边形结构之间的转换。对六边形结构进行高斯滤波和梯度计算。然后估计正方形结构上的像素边缘强度,然后应用Canny算法的阈值确定最终的边缘图。实验结果显示了采用静态图像和视频图像对六边形结构进行边缘检测,并与采用Canny算法对正方形结构进行边缘检测的结果进行了比较。
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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