基于雾网络边缘检测的水下虾类数字图像分割

Arifin Setiawan, Wiwit Agus Triyanto, Aji Setiawan, B. Warsito, A. Wibowo
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引用次数: 2

摘要

本研究以雾网络上使用边缘检测方法对水下对虾数字图像进行分割为主题,本研究提出的问题是比较五种边缘检测方法对水下对虾数字图像分割过程的精度,使用的参数为PSNR和MSE值,五种边缘检测方法在水下对虾数字图像分割过程中使用的方法分别是Canny、Sobel、Prewitt、Roberts和laplace of Gaussian (LOG)。本研究在计算过程中提出了一种雾网络技术,通过连接雾服务器的水下摄像机获取数据,提供实时信息服务,研究使用从视频数据中提取的5幅水下虾的数字图像,即图像帧数为140、850、1185、5950和6390,分别采用5种边缘检测方法实现。从研究结果来看,canny方法的边缘检测效果最好,PSNR准确率最低,为4.4619 dB, MSE最高,为106.65。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Underwater Shrimp Digital Image Segmentation Using Edge Detection Method on Fog Network
This study takes the theme of underwater shrimp digital image segmentation using edge detection methods on fog networks, the problem raised in this study is to compare the accuracy of the shrimp digital image segmentation process using five edge detection methods, the parameters used are PSNR and MSE values, five methods Edge detection used in the digital image segmentation process of underwater shrimp is the Canny, Sobel, Prewitt, Roberts and Laplacian of Gaussian (LOG). This study proposes a fog network technique in the computing process by taking data through an underwater camera connected to a fog server to provide real-time information services, the study was carried out using 5 digital images of underwater shrimp extracted from video data, namely image frames to 140, 850, 1185, 5950 and 6390 which are implemented in 5 edge detection methods. From the results of the study, the best edge detection method was the canny method with the lowest PSNR accuracy rate of 4.4619 dB and the highest MSE value of 106.65.
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