基于临时注意深度学习模型的人脸识别向掩模人脸识别的过渡

Himani Trivedi, Mahesh M. Goyani
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引用次数: 0

摘要

随着传染性致命病毒Covid-19的出现和空气污染程度的加剧,现在每个人都在适应戴口罩,因此现有的人脸识别模型的准确率正在下降。本文的研究旨在分析人脸识别任务从正常人脸识别到被蒙面人脸识别的测试准确率下降率。同时,以10种不同的深度学习架构为主干,分析了卷积块注意机制的行为。本文讨论了一种新颖的思想,即从原始的2个数据集出发,通过原始的人脸图像、模拟的被遮挡的人脸和增强的各种组合来生成用于训练的样本空间,从而提高了模型的测试精度。在其他9个实现的注意力模型中,InceptionV3+CBAM的组合在Yale和Casia子集数据集上的峰值准确率分别为88.78%和88.62%,最小的模型推理时间分别为512和923毫秒。此外,通过使用所提出的数据集(原始人脸图像+模拟面具人脸+增强)类型进行训练,与现有模型相比,提出的InceptionV3+CBAM的实现也成功地获得了更好的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Transition of Face Recognition to Mask Face Recognition Using Improvised Attention DL Model
With the emergence of the communicable fatal Covid-19 virus and increased level of air pollution, every individual is adapting to wear a facial mask now a days, due to which the existing Face Recognition Models are experiencing reduction in accuracy rate. The study in this paper is aimed to analyze the rate of drop in test accuracy for the task of face recognition from normal face recognition to the recognition of masked faces. Also, it targets to analyze the behavior of Convolution Block Attention mechanism with 10 different deep learning architectures as trunk branch. This paper discusses a novel idea to generate a sample space for training by various combinations of original face images, simulated masked faces and augmentation, from the original 2 datasets which improves the test accuracy of the models. The combination of InceptionV3+CBAM proves to be the best model with the peak accuracy of 88.78% & 88.62% and least model’s inference time of 512 & 923 milliseconds on Yale and Casia subset datset respectively among all other 9 implemented attention models. Moreover the proposed implementation of InceptionV3+CBAM also succeeds to achieve better accuracy as compared to existing models by using proposed set of dataset (Original face Images+ Simulated Mask faces+Augmentation) type for training.
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