Improving biometric verification with class-independent quality information

نویسندگان

  • Krzysztof Kryszczuk
  • Andrzej Drygajlo
چکیده

Existing approaches to biometric classification with quality measures make a clear distinction between the single-modality applications and the multimodal scenarios. This paper bridges this gap withQ−stack, a stacking-based classifier ensemble, which uses the class-independent signal quality measures and baseline classifier scores in order to improve the accuracy of uniand multimodal biometric classification. We explain the seemingly counterintuitive notion of using class-independent quality information for improving class separation by considering quality measures as conditionally relevant classification features. We present Q − stack as a generalized framework of classification with quality information, and argue that existing methods of classification with quality measures are its special cases. We further demonstrate the application of Q − stack on the task of biometric identity verification using face and fingerprint modalities, and show that the use of the proposed technique allows a systematic reduction of the error rates below those of the baseline classifiers, in scenarios involving single and multiple biometric modalities.

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تاریخ انتشار 2009