SW Convergence Education Institute, Chosun University, Gwangju, Republic of Korea.
Comput Intell Neurosci. 2022 Nov 3;2022:6854626. doi: 10.1155/2022/6854626. eCollection 2022.
Recently, IT technologies related to the Fourth Industrial Revolution (4IR), such as artificial intelligence (AI), Internet of things (IoT), cloud computing, and edge computing have been studied. Although there are many used clothing occurrences with 61 trillion worn of clothing consumption per year in Korea, it is not properly collected due to the efficiency of the used clothing collection system, and the collected used clothing is not properly recycled due to insufficient recycling system, lack of skilled labor force, and health problems of workers. To solve this problem, this study proposes a deep learning clothing classification system (DLCCS) using cloud and edge computing. The system proposed is to classify clothing image data input from camera terminals installed in various clothing classification sites in various regions into two classes, as well as nine classes, by deep learning using convolution neural network (CNN). And the classification results are stored in the cloud through edge computing. The edge computing enables the analysis of the data of the Internet of Things (IoT) device on the edge of the network before transmitting it to the cloud. The performance evaluation parameters that are considered for the proposed research study are transmission velocity and latency. Proposed system can efficiently improve the process and automation in the classification and processing of recycled clothing in various places. It is also expected that the waste of clothing resources and health problems of clothing classification workers will be improved.
最近,与第四次工业革命(4IR)相关的信息技术,如人工智能(AI)、物联网(IoT)、云计算和边缘计算,已经得到了研究。尽管韩国每年有 61 万亿件服装被消费,但由于旧衣回收系统的效率低下,这些旧衣并没有得到妥善收集,而且由于回收系统不足、缺乏熟练劳动力以及工人的健康问题,收集到的旧衣也没有得到妥善回收。为了解决这个问题,本研究提出了一种使用云计算和边缘计算的深度学习服装分类系统(DLCCS)。该系统旨在通过卷积神经网络(CNN)进行深度学习,将从安装在各个地区各种服装分类点的摄像机终端输入的服装图像数据分为两类和九类。分类结果通过边缘计算存储在云端。边缘计算使能够在将数据传输到云之前,在网络边缘分析物联网(IoT)设备的数据。所提出的研究的性能评估参数是传输速度和延迟。所提出的系统可以有效地提高各个地方回收服装分类和处理的效率和自动化程度。预计还将改善服装资源的浪费和服装分类工人的健康问题。