Execution Examination of Distinctive Edge Detection Algorithms

Israt Zarin, Nagib Mahfuz, Sarnali Bashik, Ahsan Ul Islam, Mehrab Mustafy Rahman, Kazi Sazzad Hosen
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Abstract

Edge detection or segmentation is a rudiment innovation as it can evaluate sharpness and analyze object boundaries. That’s why it carries an influential Figure in the image processing era. However, the approach of partitioning an image into discontinuous parts is called edge detection. It defines the change of intensity associated with the image boundary. Edge detection can be done using a variety of approaches. This research proposed an innovative method to measure performance of four edge detection techniques using quality assessment metrics on satellite images and Gaussian noise-influenced satellite images. This paper comprises well-known edge detection technologies like Canny, Prewitt, Scharr, and Robert operators. Furthermore, the Image Quality Assessment (IQA) metric is an image’s essential characteristic for measuring image quality. For evaluating image quality, we mainly consider SSIM, MSE, PSNR, and RMSE. The execution of the Canny and Prewitt methods on the satellite dataset has been experimentally validated. However, Canny edge detection achieves better results when the Gaussian Noise effect is applied to the same dataset.
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独特边缘检测算法的执行检验
边缘检测或分割是一种基本的创新,因为它可以评估清晰度和分析对象的边界。这就是为什么它承载了一个有影响力的人物在图像处理时代。然而,将图像分割成不连续部分的方法称为边缘检测。它定义了与图像边界相关的强度变化。边缘检测可以使用多种方法来完成。本研究提出了一种创新的方法,利用卫星图像和高斯噪声影响的卫星图像的质量评估指标来衡量四种边缘检测技术的性能。本文采用了著名的边缘检测技术,如Canny、Prewitt、Scharr和Robert算子。此外,图像质量评估(IQA)度量是衡量图像质量的基本特征。为了评估图像质量,我们主要考虑SSIM、MSE、PSNR和RMSE。Canny和Prewitt方法在卫星数据集上的执行得到了实验验证。然而,当高斯噪声效应应用于相同的数据集时,Canny边缘检测可以获得更好的结果。
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