Research on Edge Detection and Image Segmentation of Cabinet Region Based on Edge Computing Joint Image Detection Algorithm

IF 0.9 Q3 ENGINEERING, MULTIDISCIPLINARY
Gao Huixin, Zhou Gang, Cao Yang, Luo Zhiyuan, Shen Zhicheng, A. J. Gnana Malar
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引用次数: 2

Abstract

Image segmentation (IE) in several disciplines of image processing and computer vision is an essential topic. Segmentation splits a picture into the areas or items that it constitutes. Image segmentation may be achieved with many approaches, some easier than others because of sophisticated programming requirements. The most common technique for segmenting pictures is edge detection (ED) based on sudden (locomotive) intensity fluctuations. This paper aims to study edge detection approaches for the division of images and acquired experimental findings, Sobel, Prewitt, Robert, CannyLoG (Laplacian of Gaussian). It is vital to ensure that picture segmentation algorithms deliver correct results quickly and efficiently for computer vision to reach its full potential. Computer vision approaches require more investigation in hierarchical architectural IoT networks created for seeing the world. In this work, the new way to provide joint image detection (JID) algorithm is to provide multi-scaling approaches for edge detection and segmentation using IoT edge computing (EC). This JID-EC method avoids the requirement to choose and track the edge explicitly. This study provides an overview of fundamental ideas, techniques, and algorithms common to segment images and edge detection, focusing on the segmentation and visualization of joint-articular cartilage images. The reason for this failure is that it is an image noise-sensitive high pass filter. The need for improved algorithms to meet a suitable value of low and high thresholds should thus be stressed for picture noise such as a canny edge, and the performance is achieved with an efficiency of 95.2%.
基于边缘计算联合图像检测算法的橱柜区域边缘检测与图像分割研究
图像分割(IE)是图像处理和计算机视觉等多个学科中的一个重要课题。分割将图片分割成它所构成的区域或项目。图像分割可以用许多方法来实现,由于复杂的编程要求,有些方法比其他方法更容易。最常用的图像分割技术是基于突然(机车)强度波动的边缘检测(ED)。本文旨在研究边缘检测方法对图像的分割,并获得实验结果,Sobel, Prewitt, Robert, CannyLoG (laplace of Gaussian)。确保图像分割算法快速有效地提供正确的结果,使计算机视觉充分发挥其潜力至关重要。计算机视觉方法需要在为观察世界而创建的分层架构物联网网络中进行更多的研究。在这项工作中,提供联合图像检测(JID)算法的新方法是使用物联网边缘计算(EC)为边缘检测和分割提供多尺度方法。这种JID-EC方法避免了明确选择和跟踪边缘的要求。本研究概述了图像分割和边缘检测的基本思想、技术和算法,重点介绍了关节软骨图像的分割和可视化。这种失败的原因是它是一个图像噪声敏感的高通滤波器。因此,对于图像噪声(如模糊边缘),需要改进算法以满足合适的低阈值和高阈值,并且性能达到了95.2%的效率。
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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来源期刊
CiteScore
1.70
自引率
25.00%
发文量
26
期刊介绍: IJRQSE is a refereed journal focusing on both the theoretical and practical aspects of reliability, quality, and safety in engineering. The journal is intended to cover a broad spectrum of issues in manufacturing, computing, software, aerospace, control, nuclear systems, power systems, communication systems, and electronics. Papers are sought in the theoretical domain as well as in such practical fields as industry and laboratory research. The journal is published quarterly, March, June, September and December. It is intended to bridge the gap between the theoretical experts and practitioners in the academic, scientific, government, and business communities.
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