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PIS-YOLO: Real-Time Detection for Medical Mask Specification in an Edge Device

机译:PIS-YOLO:实时检测边缘设备中的医用口罩规格

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摘要

Wearing masks in a crowded environment can reduce the risk of infection; however, wearing nonstandard cloud does not have a good protective effect on the virus, which makes it necessary to monitor the wearing of masks in real time. You only look once (YOLO) series models are widely used in various edge devices. The existing YOLOv5s method meets the requirements of inference time, but it is slightly deficient in terms of accuracy due to its generality. Considering the characteristics of our driver medical mask dataset, a position insensitive loss which is cloud extract shared area feature in different categories and half deformable convolution net methods with cloud concern noteworthy features were introduced into YOLOv5s to improve accuracy, with an increase of 6.7 mean average in @.5 (mAP@.5) and 8.3 in mAP@.5:.95 for our dataset. To ensure that our method can be applied in a real scenario, TensorRT and CUDA were introduced to reduce the inference time in two edge devices (Jetson TX2 and Jetson Nano) and one desktop device, whose inference time was faster than that of previous methods.
机译:在拥挤的环境中戴口罩可以降低感染风险;但是,佩戴非标准云对病毒没有很好的保护作用,因此需要实时监控口罩的佩戴情况。你只看一次(YOLO)系列机型广泛应用于各种边缘设备。现有的YOLOv5s方法满足推理时间要求,但由于通用性,在精度方面略有不足。考虑到驾驶员医用口罩数据集的特点,在YOLOv5s中引入了不同类别的云提取共享区域特征位置不敏感损失和具有云关注显著特征的半可变形卷积网络方法,以提高精度,@.5(mAP@.5)和mAP@.5:.95的平均平均值分别提高了6.7%和8.3%。为了保证我们的方法能够在真实场景中应用,我们引入了 TensorRT 和 CUDA,以减少两个边缘设备(Jetson TX2 和 Jetson Nano)和一个桌面设备的推理时间,其推理时间比之前的方法更快。

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