用LeNet算法评估被屏蔽面和未被屏蔽面

Muhammad Haziq Rusli, N. N. A. Sjarif, S. Yuhaniz, Steven Kok, Muhammad Solihin Kadir
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引用次数: 6

摘要

人脸识别是一种广泛应用于许多领域的生物识别技术。人脸识别的应用大多是在安防监控系统中。然而,由于当前的大流行,在公共场所戴口罩是每个人的义务。因此,由于口罩的遮挡,人脸识别会遇到人脸特征提取等问题。从而降低了识别率水平。收集到的数据集包括两类:被屏蔽的人脸和未被屏蔽的人脸。该数据集名为FaceMask dataset,来自kaggle网站。采用多任务级联神经网络(Multi-Task cascade Neural Network, MTCNN)在数据集中寻找人脸区域,并对其进行图像特征提取和去除了未检测到的人脸,以准备合适的训练数据集,然后再使用LeNet算法进行训练。因此,本工作的分类分为蒙面和未蒙面两类。训练准确率为98.21%,它将关注每个结果的特征,并将证明两个类的准确率之间的差异。采用LeNet算法,该方法主要集中在人脸区域,不需要取图像的全尺寸,准确率达到98.21%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluating the Masked and Unmasked Face with LeNet Algorithm
Face recognition is a biometric technique that has been widely used in many fields. Most of the face recognition applications are used in the security and surveillance system. However, due to current pandemic, wearing facemasks is an obligation for everybody in public places. Hence, face recognition will encounter a problem such as extracting the facial features due to blockage caused by the facemasks. Thus, it will lower down the recognition rate level. The collected dataset consists of two categories which is masked face and unmasked face. This dataset called FaceMask Dataset was obtained from kaggle website. The Multi-Task Cascaded Neural Network (MTCNN) was used to find the face region in the dataset, and it will undergo image feature extraction and remove the undetected face as to prepare a proper training dataset before it can be trained by using LeNet algorithm. As the result, the categories in this work are fall into two classes, which masked face and unmasked face. The training accuracy was 98.21% and it will focus on the features on each result and will justify the difference between the accuracy for both classes. The proposed method was able to achieve 98.21% accuracy with LeNet algorithm as the face image was mainly focused on the face area without taking full size of the image.
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