After the COVID-19 outbreak, it has become important to automatically detect whether people are wearing masks in order to reduce risk of front-line workers. In addition, processing user data locally is a great way to address both privacy and network bandwidth issues. In this paper, we present a light-weighted model for detecting whether people in a particular area wear masks, which can also be deployed on Coral Dev Board, a commercially available development board containing Google Edge TPU. Our approach combines the object detecting network based on MobileNetV2 plus SSD and the quantization scheme for integer-only hardware. As a result, the lighter model in the Edge TPU has a significantly lower latency which is more appropriate for real-time execution while maintaining accuracy comparable to a floating point device.
翻译:在COVID-19爆发后,必须自动检测人们是否戴面罩,以减少第一线工人的风险;此外,本地处理用户数据是解决隐私和网络带宽问题的绝佳方法;在本文件中,我们提出了一个轻量级模型,用以检测特定地区的人是否戴面罩,这个模型也可以部署在包含Google Edge TPU的商业开发委员会上。我们的方法将基于移动网络V2加上SSD的物体探测网络和只对整数硬件的量化办法结合起来。因此,电极中较轻的模型的延时率要低得多,更适合实时执行,同时保持与浮动点装置的准确性。