基于物联网和云计算的智能图像检测系统

A. Admin, Mhmed Algrnaodi
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引用次数: 1

摘要

图像是人类感知和获取信息最直观的方式,是最重要的信息来源之一。随着信息技术的发展,利用数字图像处理方法对目标进行定位和识别被广泛应用,因此在图像中快速准确地检测出感兴趣的目标就显得尤为重要。传统的图像检测系统存在检测精度低、耗时长、稳定性差等问题。因此,本文提出了基于物联网和云计算的人工智能图像检测系统的设计与研究。本文设计的系统主要包括三个环节,即:云计算环境下的图像处理分析设计环节、图像特征采集模块设计环节、图像集成检测环节。云计算环境下图像处理与分析主要采用的技术有虚拟化技术、分布式海量数据存储技术和分布式计算技术。在图像特征采集模块中,在将图像输入神经网络之前,需要对畸变图像进行预处理操作,并进行透视校正;然后利用深度学习中的深度残差网络提取特征。最后是图像集成检测环节。首先对候选区域生成网络生成的区域进行目标类别判断和位置校正,然后通过改进的基于帧差法的目标检测方法进行综合图像检测。通过仿真实验,与传统的图像检测系统相比,本文设计的人工智能图像检测系统在图像数量大量增加的情况下,速度优势明显。在不同像素级的图像上,本文提出的图像检测系统的准确率始终高于传统的图像检测系统,CPU占用率和内存占用率都处于较低的水平。此外,三个月内,稳定性也处于0.9的较高水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent Image Detection System Based on Internet of Things and Cloud Computing
Images are the most intuitive way for humans to perceive and obtain information, and they are one of the most important sources of information. With the development of information technology, the use of digital image processing methods to locate and identify targets is widely used, so it is particularly important to detect the targets of interest quickly and accurately in the image. The traditional image detection system has the problems of low detection accuracy, long time consumption, and poor stability. Therefore, this paper proposes the design and research of artificial intelligence image detection system based on Internet of Things and cloud computing. The system designed in this article mainly includes three links, namely: image processing analysis design link in cloud computing environment, image feature collection module design link, and image integration detection link. The main technologies used in image processing and analysis in the cloud computing environment are virtualization technology, distributed massive data storage, and distributed computing. In the image feature collection module, before the image is input to the neural network, it is necessary to perform preprocessing operations on the distorted image and perform perspective correction; then use the deep residual network in deep learning to extract features. Finally, there is the image integration detection link. First, the target category judgment and position correction are performed on the regions generated by the candidate region generation network, and then the integrated image detection is performed through the improved target detection method based on the frame difference method. Through simulation experiments, compared with the traditional image detection system, the speed advantage of the artificial intelligence image detection system designed in this paper is obvious in the case of a large increase in the number of images. On images at different pixel levels, the accuracy of the image detection system proposed in this paper is always higher than that of traditional image detection systems, and the CPU usage and memory usage are at a lower level. In addition, within three months, the stability is also at a relatively high level of 0.9.
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