基于质量的生物识别分类器选择框架

H. Bhatt, Samarth Bharadwaj, Mayank Vatsa, Richa Singh, A. Ross, A. Noore
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引用次数: 24

摘要

多生物识别系统融合了与多个生物识别模式或分类器相关的证据(例如,匹配分数)。文献中讨论的大多数分数级融合方案要求在调用融合方案之前对每个模态进行处理(即特征提取和匹配)。本文提出了一种基于图库质量的动态分类器选择和融合框架,该框架基于多个分类器与每个模态相关联的探测图像。每种生物识别模式的质量评估算法计算用于分类器选择的图库和探针图像的质量向量。这些向量用于训练支持向量机(svm)进行决策。在所提出的框架中,生物识别模态按顺序排列,使得较强的生物识别模态具有较高的处理优先权。由于只有当支持向量机分类器拒绝所有单峰分类器时才需要融合,因此所提出的框架的平均计算时间大大减少。在人脸和指纹等不同的多模态数据库上的实验结果表明,在生物特征样本质量不理想的情况下,本文提出的基于质量的分类器选择框架仍具有良好的性能。
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A framework for quality-based biometric classifier selection
Multibiometric systems fuse the evidence (e.g., match scores) pertaining to multiple biometric modalities or classifiers. Most score-level fusion schemes discussed in the literature require the processing (i.e., feature extraction and matching) of every modality prior to invoking the fusion scheme. This paper presents a framework for dynamic classifier selection and fusion based on the quality of the gallery and probe images associated with each modality with multiple classifiers. The quality assessment algorithm for each biometric modality computes a quality vector for the gallery and probe images that is used for classifier selection. These vectors are used to train Support Vector Machines (SVMs) for decision making. In the proposed framework, the biometric modalities are arranged sequentially such that the stronger biometric modality has higher priority for being processed. Since fusion is required only when all unimodal classifiers are rejected by the SVM classifiers, the average computational time of the proposed framework is significantly reduced. Experimental results on different multi-modal databases involving face and fingerprint show that the proposed quality-based classifier selection framework yields good performance even when the quality of the biometric sample is sub-optimal.
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