基于音视频多模态人识别的多特征子空间分析

Dihong Gong, Na Li, Zhifeng Li, Y. Qiao
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引用次数: 0

摘要

近年来,由于商业和执法应用中日益增长的安全需求,生物识别技术受到了广泛的关注。然而,使用单一的生物识别有几个问题。为了缓解这些问题,提出了多模态生物识别系统,将多种生物识别模式组合在一起,以提高身份验证的鲁棒性。一个典型的应用是将声音和人脸结合起来进行多模态人识别,因为人脸或声音都是人们用来识别彼此的最自然的生物特征之一。本文提出了一种基于音视频的生物特征人识别新方法——多特征子空间分析。在MFSA框架中,每个人脸序列或话语用固定长度的特征向量表示,然后对随机子空间集合进行子空间分析方法,构建分类器集合进行鲁棒识别。在XM2VTSDB语料库上的实验充分验证了该方法的可行性和有效性。
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Multi-feature subspace analysis for audio-vidoe based multi-modal person recognition
Biometric person recognition has received a lot of attention in recent years due to the growing security demands in commercial and law enforcement applications. However, using a single biometric has several problems. In order to alleviate these problems, multi-modal biometric systems are proposed by combining various biometric modalities to improve the robustness of person authentication. A typical application is to combine both audio and face for multimodal person recognition, since either face or voice is among the most natural biometrics that people use to identify each other. In this paper, a novel approach called multi-feature subspace analysis (MFSA) is proposed for audio-video based biometric person recognition. In the MFSA framework, each face sequence or utterance is represented with a fix-length feature vector, and then subspace analysis method is performed on a collection of random subspaces to construct an ensemble of classifiers for robust recognition. Experiments on the XM2VTSDB corpus sufficiently validate the feasibility and effectiveness of our new approach.
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