基于OpenCV和MobileNetV2的cnn掩码检测系统

H. G., Jesica. J, A. K., K. Sagayam
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引用次数: 30

摘要

本文建立了“COVID-19大流行期间口罩检测安全系统”。自前所未有的COVID-19全球大流行迫使人们在公共场所戴口罩以来,计算机视觉和深度学习领域的口罩检测出现了压倒性的增长。为了解决这种情况,机器学习工程师提出了几种算法和技术,使用各种面具检测模型来识别未戴面具的人。本文提出的方法采用深度学习框架、TensorFlow、Keras和OpenCV库来实时检测人脸。本文提出的训练后的MobileNet模型在训练数据中的准确率得分为0.99,F1得分为0.99。这种用户友好的模型可以与几种现有技术相结合,如面部检测、生物识别认证和面部表情检测,以实现未来的进一步发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CNN-based Mask Detection System Using OpenCV and MobileNetV2
this paper establishes a ‘Safety system for mask detection during this COVID-19 pandemic’. Face mask detection has seen an overwhelming growth in the realm of Computer vision and deep learning, since the unprecedented COVID-19 global pandemic that has mandated wearing masks in public places. To tackle the situation, machine learning engineers have come up with several algorithms and techniques to identify unmasked individuals using various mask detection models. The proposed approach in this paper adopts frameworks of deep learning, TensorFlow, Keras, and OpenCV libraries to detect face masks in real time. The trained MobileNet model, presented in this paper, yielded an accuracy score of 0.99 and an F1 score of 0.99 in the training data. This user-friendly model can be incorporated with several existing technologies such as face detection, biometric authentication and facial expression detection for further advancements in the future.
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