使用CNN算法识别隐藏图像的深度学习模型

R. Shukla, A. Sengar, Anurag Gupta, Nupa Ram Chauhar
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引用次数: 0

摘要

在本文中,我们获得并解决了人脸识别与验证问题,包括带面具和不带面具的人脸图像。在这个算法中,他们的模型允许用户使用网络摄像头、数码相机和多媒体摄像头来识别和检测面部的几个面部相关特征。在本文中,我们进行了详细和系统的结果来验证这些经典特征学习系统对线性和非线性类不平衡结果的有效性。我们还证明了通过实现深度网络模型可以学习到更多具有歧视性的深度表征特征。这个模型保持了两类包括集群的边际。利用卷积神经网络(CNN)对带掩模和不带掩模的人脸图像进行了有效的处理。它们在离线和实时性能方面都提供了良好的结果,并且具有可预测的精度值。他们对公开可用的数据集(如DEEPFace)进行了评估,并对有面具和没有面具的数据集进行了评估。该模型在不同类型的人脸相关数据集上具有较好的识别效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning Model to Identify Hide Images using CNN Algorithm
In this paper, we are obtaining and solving the problem of face identification and verification including with mask and without mask face images. In this algorithm they model allows users to use the webcam, digital cameras and multimedia cameras for identify and detect several face related features in the faces. In this paper, we are conducting detailed and systematic result to verify the effectiveness of these classic feature learning systems on linear and nonlinear class imbalanced outcomes. We also demonstrate more discriminatory deep representation features can be learned through the implementation of a deep network model. This model is maintaining the margin of the both classes including clusters. With using Convolutional Neural Network (CNN), they are providing efficient result in with mask and without mask face image. They are providing good result in both offline and real time performance with predictable value of accuracy. They are done research in evaluations of being made for publicly available datasets like DEEPFace and with mask and without mask dataset. The proposed model is working best result in different-different face related datasets to identify with face mask and without face mask images.
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