Child Detection Model Using YOLOv5

A. Tahir, Shamsul Kamal Ahmad Khalid, Lokman Mohd Fadzil
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Abstract

Closed-circuit television (CCTV) surveillance systems have been installed in public locations to search for missingchildren and fight crime. The Penang City Council has deployed a face recognition CCTV monitoring system. As a result, this research aims to identify children who were in the wrong area or at the wrong time and then notify authorities such as police and parents. According to child detection research, the average child loss rate is more significant due to lacking child detection features. Existing research employs machine learning and deep learning across several platforms, yielding inaccurate accuracy findings. Using the YOLOv5 algorithm, this study will categorize images based on children's detection in restricted locations. Coco, Coco128, and Pascal VOC were chosen because they are the standard datasets of YOLOv5 and the public dataset INRIA Person. Annotations and augmentation techniques are employed in the pre-processing phase to acquire labeling in text file format and offer data for any object position. The YOLOv5s model will then be designed to make the proposed detector model. After training using YOLOv5s, a child detector model is produced and evaluated on the dataset to acquire findings according to recall, precision, and mean average precision (mAP) performance metrics. Finally, the performance metrics obtained from all four datasets are compared. The INRIA Person dataset performed the best, with a recall of 0.995, an accuracy of 0.998, and a mean Average Accuracy of 0.995. Nevertheless, the findings for both YOLOv5s and the proposed model are pretty close. This demonstrates that the proposed model can detect as well as the YOLOv5s model.
基于YOLOv5的儿童检测模型
在公共场所安装了闭路电视监控系统,以寻找失踪儿童和打击犯罪。槟城市议会已经部署了一个人脸识别闭路电视监控系统。因此,这项研究的目的是确定在错误的地方或错误的时间出现的孩子,然后通知警方和父母等当局。根据儿童检测研究,由于缺乏儿童检测功能,平均儿童损失率更为显著。现有的研究在多个平台上使用机器学习和深度学习,得出的准确性结果不准确。本研究将使用YOLOv5算法,基于儿童在受限位置的检测对图像进行分类。之所以选择Coco、Coco128和Pascal VOC,是因为它们是YOLOv5的标准数据集和INRIA Person的公共数据集。预处理阶段采用标注和增强技术,获取文本文件格式的标注,提供任意对象位置的数据。然后,YOLOv5s模型将被设计成提出的探测器模型。在使用YOLOv5s进行训练后,生成儿童检测器模型并在数据集上进行评估,以根据召回率、精度和平均平均精度(mAP)性能指标获得结果。最后,比较了从所有四个数据集获得的性能指标。INRIA Person数据集表现最好,召回率为0.995,准确率为0.998,平均平均准确率为0.995。尽管如此,yolov5和提出的模型的结果非常接近。这表明,该模型可以检测YOLOv5s模型。
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CiteScore
5.60
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