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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >A robust face and ear based multimodal biometric system using sparse representation
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A robust face and ear based multimodal biometric system using sparse representation

机译:使用稀疏表示的鲁棒性基于面部和耳朵的多模式生物识别系统

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If fusion rules cannot adapt to the changes of environment and individual users, multimodal systems may perform worse than unimodal systems when one or more modalities encounter data degeneration. This paper develops a robust face and ear based multimodal biometric system using Sparse Representation (SR), which integrates the face and ear at feature level, and can effectively adjust the fusion rule based on reliability difference between the modalities. We first propose a novel index called Sparse Coding Error Ratio (SCER) to measure the reliability difference between face and ear query samples. Then, SCER is utilized to develop an adaptive feature weighting scheme for dynamically reducing the negative effect of the less reliable modality. In multimodal classification phase, SR-based classification techniques are employed, i.e., Sparse Representation based Classification (SRC) and Robust Sparse Coding (RSC). Finally, we derive a category of SR-based multimodal recognition methods, including Multimodal SRC with feature Weighting (MSRCW) and Multimodal RSC with feature Weighting (MRSCW). Experimental results demonstrate that: (a) MSRCW and MRSCW perform significantly better than the unimodal recognition using either face or ear alone, as well as the known multimodal methods; (b) The effectiveness of adaptive feature weighting is verified. MSRCW and MRSCW are very robust to the image degeneration occurring to one of the modalities. Even when face (ear) query sample suffers from 100% random pixel corruption, they can still get the performance close to the ear (face) unimodal recognition; (c) By integrating the advantages of adaptive feature weighting and sparsity-constrained regression, MRSCW seems excellent in tackling the face and ear based multimodal recognition problem.
机译:如果融合规则无法适应环境和个人用户的变化,则当一种或多种模式遇到数据退化时,多模式系统的性能可能会比单模式系统差。本文开发了一种基于稀疏表示(SR)的健壮的基于面部和耳朵的多模式生物特征识别系统,该系统在特征级别集成了面部和耳朵,并可以根据模态之间的可靠性差异有效地调整融合规则。我们首先提出一种新颖的索引,称为稀疏编码错误率(SCER),以测量面部和耳朵查询样本之间的可靠性差异。然后,利用SCER开发一种自适应特征加权方案,以动态降低可靠性较差的模态的负面影响。在多模式分类阶段,采用基于SR的分类技术,即基于稀疏表示的分类(SRC)和鲁棒稀疏编码(RSC)。最后,我们得出一类基于SR的多模式识别方法,包括具有特征加权的多峰SRC(MSRCW)和具有特征加权的多峰RSC(MRSCW)。实验结果表明:(a)MSRCW和MRSCW的性能明显优于仅使用脸部或耳朵以及已知的多峰方法的单峰识别; (b)验证了自适应特征加权的有效性。 MSRCW和MRSCW对于其中一种模式发生的图像退化非常强大。即使面部(耳朵)查询样本遭受100%随机像素损坏,它们仍然可以获得接近耳朵(面部)单峰识别的性能; (c)通过融合自适应特征加权和稀疏约束回归的优势,MRSCW在解决基于面部和耳朵的多模式识别问题方面似乎非常出色。

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