Max Feature Map CNN with Support Vector Guided Softmax for Face Recognition

Herdianti Darwis, Zahrizhal Ali, Yulita Salim, Poetri Lestari Lokapitasari Belluano
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Abstract

Face recognition has made significant progress because of advances in deep convolutional neural networks (CNNs) in addressing face verification in large amounts of data variation. When image data comes from different sources and devices, the identifiability of other classes and the presence of profile face data can lead to inaccurate and ambiguous classification because other classes lack discriminatory power. Furthermore, using a complex architecture with many deep convolutional layers can become very slow in the training process due to a huge amount of Random Access Memory (RAM) usage during the reverse pass of backpropagation. In this paper, we design a light CNN architecture that addresses these challenges. Specifically, we implemented Max-feature-map (MFM) into each convolutional layer to improve the accuracy and efficiency of the CNN. The strength of the support vector-guided SoftMax (SV-SoftMax) is also used in the proposed method to emphasize misclassified points and adaptively guide feature learning. Experimental results show that the 9-Layers CNN with MFM layer and SV-SoftMax outperform VGG-19 with 96.22% validation accuracy and the second rank below FaceNet tested on the same dataset with fewer parameters. Moreover, the model performed well on data that is obtained from various capture devices such as webcam, CCTVs, phone cameras, and DSLR cameras. The implications of this research could extend to scenarios requiring face recognition technology implementation with light size, such as surveillance and authentication systems
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最大特征地图CNN与支持向量引导Softmax的人脸识别
由于深度卷积神经网络(cnn)在处理大量数据变化中的人脸验证方面的进步,人脸识别取得了重大进展。当图像数据来自不同的来源和设备时,由于其他类别缺乏区分能力,其他类别的可识别性和侧面脸数据的存在可能导致分类不准确和模糊。此外,使用具有许多深度卷积层的复杂架构可能会在训练过程中变得非常缓慢,因为在反向传播期间使用了大量的随机存取存储器(RAM)。在本文中,我们设计了一个轻型CNN架构来解决这些挑战。具体来说,我们在每个卷积层中实现了最大特征映射(Max-feature-map, MFM)来提高CNN的准确率和效率。该方法还利用支持向量引导SoftMax (SV-SoftMax)的强度来强调错误分类点并自适应引导特征学习。实验结果表明,具有MFM层和SV-SoftMax的9层CNN在相同数据集上以96.22%的验证准确率优于VGG-19,并且在参数较少的情况下排名低于FaceNet。此外,该模型在从各种捕获设备(如网络摄像头、闭路电视、手机摄像头和单反相机)获得的数据上表现良好。这项研究的意义可以扩展到需要轻尺寸面部识别技术实施的场景,例如监视和身份验证系统
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来源期刊
JOIV International Journal on Informatics Visualization
JOIV International Journal on Informatics Visualization Decision Sciences-Information Systems and Management
CiteScore
1.40
自引率
0.00%
发文量
100
审稿时长
16 weeks
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