基于YOLOv5的精确实时人脸检测框架

Nouran Youssry, Ahmed K. F. Khattab
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引用次数: 4

摘要

在新冠肺炎大流行之后,戴口罩是必须的,因为它可以将感染概率降低68%。这就是为什么快速准确的自动口罩检测对公共机构至关重要。本文提出了一个使用YOLOv5目标检测算法进行实时掩码检测的精确框架。我们的框架包括四个阶段:图像预处理归一化和添加噪声,添加负样本和数据增强,然后基于改进版本的YOLOv5检测核心。在10毫秒的推理时间内,该框架在人脸检测数据集上实现了95.9%的精度和84.8%的平均精度。
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Accurate Real-Time Face Mask Detection Framework Using YOLOv5
After the COVID-19 pandemic, wearing a mask has become a must because it decreases the probability of infection by 68%. That is why a fast and accurate automatic mask detection is crucial to public institutions. In this paper, we present an accurate framework for real-time mask detection using YOLOv5 object detection algorithm. Our framework consists of four stages: image preprocessing by normalization and adding noise, adding negative samples and data augmentation then the detection core based on a modified version of YOLOv5. The proposed framework achieves 95.9% precision and 84.8% mean average precision using the Face Mask Detection dataset with a 10 milliseconds inference time.
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