Mask wearing detection algorithm based on improved Yolov7

Xu Zhou, Guojun Lin
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Abstract

Manual inspection of the mask is too time-consuming and laborious. In order to detect whether a mask is worn in a crowded public place, a mask-wearing detection method based on improved YOLOV7 is proposed, which uses Depth wise separable convolution instead of conventional convolution, in order to integrate the local feature information and the whole image information deeply, Dilated Convolution was used to improve the Pyramid Pooling Module (DC-PPM) , at last, the loss function of target location is optimized, which makes it not only have the ability of feature extraction to fuse the whole and local information, but also have the ability of not losing the detail information. The experimental results show that the detection accuracy and speed of the algorithm are 95.07% and 79 frames/s respectively, which are 3.4% and 14 frames/s higher than the original YOLOV7 algorithm, very good to meet the actual application needs.
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基于改进型 Yolov 的面具佩戴检测算法7
人工检查口罩费时费力。为了在拥挤的公共场所检测是否佩戴口罩,提出了一种基于改进 YOLOV7 的佩戴口罩检测方法,该方法使用深度可分离卷积代替传统卷积,以深度整合局部特征信息和整体图像信息、利用稀释卷积对金字塔池化模块(DC-PPM)进行了改进,最后对目标位置的损失函数进行了优化,使其既具有融合整体和局部信息的特征提取能力,又具有不丢失细节信息的能力。实验结果表明,该算法的检测精度和速度分别为 95.07% 和 79 帧/秒,比原 YOLOV7 算法分别提高了 3.4% 和 14 帧/秒,很好地满足了实际应用需求。
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