Survey of Image Edge Detection

IF 1.3 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC Frontiers in signal processing Pub Date : 2022-03-09 DOI:10.3389/frsip.2022.826967
Rui Sun, Tao Lei, Qi Chen, Zexuan Wang, Xiaogang Du, Weiqiang Zhao, A. Nandi
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引用次数: 26

Abstract

Edge detection technology aims to identify and extract the boundary information of image pixel mutation, which is a research hotspot in the field of computer vision. This technology has been widely used in image segmentation, target detection, and other high-level image processing technologies. In recent years, considering the problems of thick image edge contour, inaccurate positioning, and poor detection accuracy, researchers have proposed a variety of edge detection algorithms based on deep learning, such as multi-scale feature fusion, codec, network reconstruction, and so on. This paper dedicates to making a comprehensive analysis and special research on the edge detection algorithms. Firstly, by classifying the multi-level structure of traditional edge detection algorithms, the theory and method of each algorithm are introduced. Secondly, through focusing on the edge detection algorithm based on deep learning, the technical difficulties, advantages of methods, and backbone network selection of each algorithm are analysed. Then, through the experiments on the BSDS500 and NYUD dataset, the performance of each algorithm is further evaluated. It can be seen that the performance of the current edge detection algorithms is close to or even beyond the human visual level. At present, there are a few comprehensive review articles on image edge detection. This paper dedicates to making a comprehensive analysis of edge detection technology and aims to offer reference and guidance for the relevant personnel to follow up easily the current developments of edge detection and to make further improvements and innovations.
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图像边缘检测综述
边缘检测技术旨在识别和提取图像像素突变的边界信息,是计算机视觉领域的研究热点。该技术已广泛应用于图像分割、目标检测等高级图像处理技术中。近年来,考虑到图像边缘轮廓粗大、定位不准确、检测精度差等问题,研究人员提出了多种基于深度学习的边缘检测算法,如多尺度特征融合、编解码、网络重构等。本文致力于对边缘检测算法进行综合分析和专门研究。首先,通过对传统边缘检测算法的多层次结构进行分类,介绍了各算法的原理和方法;其次,通过对基于深度学习的边缘检测算法的研究,分析了各算法的技术难点、各方法的优势以及骨干网的选择。然后,通过在BSDS500和NYUD数据集上的实验,进一步评价了每种算法的性能。可以看出,目前的边缘检测算法的性能已经接近甚至超越了人类的视觉水平。目前,关于图像边缘检测的综合性综述文章很少。本文致力于对边缘检测技术进行全面的分析,旨在为相关人员方便地跟踪当前边缘检测的发展,进行进一步的改进和创新提供参考和指导。
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