Audio-Visual Person Recognition Using Deep Convolutional Neural Networks

Sagar Vegad, H. Patel, H. Zhuang, M. Naik
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引用次数: 7

Abstract

Protection of data integrity and person identity has been an active research area for many years. Among the techniques investigated, developing multi-modal recognition systems using audio and face signals for people authentication holds a promising future due to its ease of use. A challenge in developing such a multi-modal recognition system is to improve its reliability for a practical application. In this paper, an efficient audio-visual bimodal recognition system which uses Deep Convolution Neural Networks (CNNs) as a primary model architecture. First, two separate Deep CNN models are trained with the help of audio and facial features, respectively. The outputs of these CNN models are then combined/fused to predict the identity of the subject. Implementation details with regard to data fusion are discussed in a great length in the paper. Through experimental verification, the proposed bimodal fusion approach is superior in accuracy performance when compared with any single modal recognition systems and with published results using the same data-set.
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基于深度卷积神经网络的视听人物识别
多年来,数据完整性和个人身份保护一直是一个活跃的研究领域。在研究的技术中,开发使用音频和面部信号进行身份验证的多模态识别系统因其易于使用而具有广阔的前景。开发这种多模态识别系统的一个挑战是如何提高其实际应用的可靠性。本文提出了一种以深度卷积神经网络(cnn)为主要模型结构的高效视听双峰识别系统。首先,分别在音频和面部特征的帮助下训练两个独立的Deep CNN模型。然后将这些CNN模型的输出组合/融合以预测主体的身份。文中对数据融合的实现细节作了较长的讨论。通过实验验证,与单模态识别系统和使用相同数据集的已发表结果相比,所提出的双模态融合方法具有更高的精度。
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