Recent period of pandemic has brought person identification even with occluded face image a great importance with increased number of mask usage. This paper aims to recognize the occlusion of one of four types in face images. Various transfer learning methods were tested, and the results show that MobileNet V2 with Gated Recurrent Unit(GRU) performs better than any other Transfer Learning methods, with a perfect accuracy of 99% in classification of images as with or without occlusion and if with occlusion, then the type of occlusion. In parallel, identifying the Region of interest from the device captured image is done. This extracted Region of interest is utilised in face identification. Such a face identification process is done using the ResNet model with its Caffe implementation. To reduce the execution time, after the face occlusion type was recognized the person was searched to confirm their face image in the registered database. The face label of the person obtained from both simultaneous processes was verified for their matching score. If the matching score was above 90, the recognized label of the person was logged into a file with their name, type of mask, date, and time of recognition. MobileNetV2 is a lightweight framework which can also be used in embedded or IoT devices to perform real time detection and identification in suspicious areas of investigations using CCTV footages. When MobileNetV2 was combined with GRU, a reliable accuracy was obtained. The data provided in the paper belong to two categories, being either collected from Google Images for occlusion classification, face recognition, and facial landmarks, or collected in fieldwork. The motive behind this research is to identify and log person details which could serve surveillance activities in society-based e-governance.
翻译:近来的流行病时期使得人的身份识别,即使有隐蔽的面部图像,也具有非常重要的意义。 本文旨在确认面部图像使用量的增加, 目的是识别面部图像中四种类型之一的封闭性。 测试了各种传输学习方法, 结果显示, Gated 经常单位( GRU) 的移动Net V2 与 Gated 经常单位( GRU) 相比, 移动式网络 V2 的表现比任何其他的转移学习方法都好, 在将图像分类为有或没有隐蔽的图像时, 与隐蔽相隔, 然后是隐蔽的。 同时, 在从设备捕获到隐蔽的图像中, 将识别对象区域 。 提取的图像区域在面部域中, 使用 ResNet 模型模型来进行这种身份识别过程 。 在已收集的 GLOV 2 之前, 进行身份识别, 使用真实的 身份识别系统, 也可以使用真实的 RU2 身份识别系统 。