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通过社会蜘蛛优化算法(SSO)优化支持向量机(SVM)用于彩色图像边缘检测

Optimizing support vector machine (SVM) by social spider optimization (SSO) for edge detection in colored images.

作者信息

Wang Jianfei

机构信息

Suzhou Chien-Shiung Institute of Technology, Taicang, 215411, China.

出版信息

Sci Rep. 2024 Apr 21;14(1):9136. doi: 10.1038/s41598-024-59811-z.

Abstract

Edge detection in images is a vital application of image processing in fields such as object detection and identification of lesion regions in medical images. This problem is more complex in the domain of color images due to the combination of color layer information and the need to achieve a unified edge boundary across these layers, which increases the complexity of the problem. In this paper, a simple and effective method for edge detection in color images is proposed using a combination of support vector machine (SVM) and the social spider optimization (SSO) algorithm. In the proposed method, the input color image is first converted to a grayscale image, and an initial estimation of the image edges is performed based on it. To this end, the proposed method utilizes an SVM with a Radial Basis Function (RBF) kernel, in which the model's hyperparameters are tuned using the SSO algorithm. After the formation of initial image edges, the resulting edges are compared with pairwise combinations of color layers, and an attempt is made to improve the edge localization using the SSO algorithm. In this step, the optimization algorithm's task is to refine the image edges in a way that maximizes the compatibility with pairwise combinations of color layers. This process leads to the formation of prominent image edges and reduces the adverse effects of noise on the final result. The performance of the proposed method in edge detection of various color images has been evaluated and compared with similar previous strategies. According to the obtained results, the proposed method can successfully identify image edges more accurately, as the edges identified by the proposed method have an average accuracy of 93.11% for the BSDS500 database, which is an increase of at least 0.74% compared to other methods.

摘要

图像中的边缘检测是图像处理在诸如目标检测和医学图像中病变区域识别等领域的一项重要应用。由于颜色层信息的组合以及需要在这些层上实现统一的边缘边界,这个问题在彩色图像领域更加复杂,这增加了问题的复杂性。本文提出了一种结合支持向量机(SVM)和社会蜘蛛优化(SSO)算法的简单有效的彩色图像边缘检测方法。在所提出的方法中,首先将输入的彩色图像转换为灰度图像,并基于此对图像边缘进行初始估计。为此,该方法利用具有径向基函数(RBF)核的支持向量机,其中模型的超参数使用社会蜘蛛优化算法进行调整。在形成初始图像边缘后,将所得边缘与颜色层的成对组合进行比较,并尝试使用社会蜘蛛优化算法改善边缘定位。在这一步中,优化算法的任务是以最大化与颜色层成对组合的兼容性的方式细化图像边缘。这个过程导致形成突出的图像边缘,并减少噪声对最终结果的不利影响。所提出的方法在各种彩色图像边缘检测中的性能已经得到评估,并与之前类似的策略进行了比较。根据所得结果,所提出的方法能够更准确地成功识别图像边缘,因为对于BSDS500数据库,所提出的方法识别的边缘平均准确率为93.11%,与其他方法相比至少提高了0.74%。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4e53/11033277/f751a0fb9701/41598_2024_59811_Fig1_HTML.jpg

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