使用 Yolo 框架的 cnn 算法在制造企业产品对象检测中的应用

A. Maulana, M. Suherman, A. Masruriyah, H. Novita
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引用次数: 0

摘要

制造企业用于制造机器的组件产品有 A 型和 B 型两类。由于采用传统的分拣流程,使用的是人力,因此行业内经常出现的问题是产品分拣错误。其缺点是人力有限,容易产生疲劳,造成产品分拣错误,给企业带来损失。许多研究都在讨论对象检测,在这项技术的帮助下,可以解决检查过程中的工业问题。物体检测的工作原理是通过寻找物体的方法来分析帧。数字图像处理中有一些方法,其中包括计算机视觉中的 CNN 算法。不断增长的框架使 CNN 算法更加强大。YOLO 包含一个基于 CNN 算法的框架。YOLOv5 通过考虑对象的置信度值来检测对象,检测对象的输出是对象上的一个边界框。借助该技术,可以解决行业在检查过程中遇到的问题。因此,本研究旨在为制造企业创建一个产品对象检测模型。研究过程包括数据收集、图像标注、训练、测试和评估。所收集的图像中有 137 幅为训练数据,34 幅为验证数据,共计 171 幅图像数据。该模型使用 YOLOv5,epoch 1000 的结果为精确度 100%,召回率 100%,mAP 99%,产品检测结果的平均值为 100%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PENERAPAN ALGORITMA CNN MENGGUNAKAN FRAMEWORK YOLO UNTUK DETEKSI OBJEK PRODUK DI PERUSAHAAN MANUFAKTUR
Component products used for manufacturing a machine in manufacturing companies have two types of products, type A and B. The problem that often occurs in the industry is product sorting errors due to the traditional sorting process, using human labor. The disadvantages are limited human labor so that fatigue can occur, causing errors in sorting products and losses for the company. Many studies discuss object detection, Industrial problems in the checking process can be approached with the help of this technology. Object detection works to analyze frames with the method of finding objects. There are methods in digital image processing, CNN algorithms which include methods in computer vision. The growing framework makes the CNN algorithm more powerful. YOLO includes a framework based on the CNN algorithm. YOLOv5 detects objects by taking into account the object's confidence value, the output of the detected object is a bounding box on the object. The problem in the industry in the checking process can be approached with the help of this technology. For this reason, this research aims to create a model for product object detection in manufacturing companies. The process carried out is data collection, image annotation, training, testing, evaluation. The images collected were 137 for training data and 34 for validation data totaling 171 image data. The results of the model using YOLOv5 with epoch 1000 get a precision value of 100%, recall 100% and mAP 99%, the product detection results get an average value of 100%.
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