基于最大正交法的深度学习特征融合多模态生物识别系统

P. Shende, Y. Dandawate
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引用次数: 1

摘要

采用多模态生物识别技术开发了鲁棒的识别系统。面部、指纹和手掌静脉等生物特征被用于安全目的。在该系统中,使用卷积神经网络对图像特征进行识别。卷积神经网络是一种复杂的前馈神经网络,以其较高的准确率用于图像分类和识别。卷积神经网络提取人脸特征、指纹特征和掌纹特征。特征级融合在整流线性单元层完成。采用最大正交分量法进行融合。在最大正交分量法中,考虑并融合了生物特征的显著特征。该方法有助于提高图像的识别率。数据库是使用这些生物识别技术自行生成的。训练和测试使用4500张人脸、指纹和手掌静脉图像完成。该技术提高了性能参数。实验结果优于常规方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multimodal biometric identification system with deep learning based feature level fusion using maximum orthogonal method
Multimodal Biometrics are used to developed the robust system for Identification. Biometric such as face, fingerprint and palm vein are used for security purposes. In this Proposed System, Convolutional neural network is used for recognizing the image features. Convolutional neural networks are complex feed forward neural networks used for image classification and recognition due to its high accuracy rate. Convolutional neural network extracts the features of face, fingerprint and palm vein. Feature level fusion is done at Rectified linear unit layer. Maximum orthogonal component method is used for Fusion. In Maximum orthogonal component method, prominent features of biometrics are considered and fused together. This method helps to improve the recognition rates. Database are self-generated using these biometrics. Training and Testing is done using 4500 images of face, fingerprint and palm vein. Performance parameters are improved by this technique. The experimental results are better than conventional methods.
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