Sciweavers

TIFS
2010

Addressing missing values in kernel-based multimodal biometric fusion using neutral point substitution

13 years 10 months ago
Addressing missing values in kernel-based multimodal biometric fusion using neutral point substitution
In multimodal biometric information fusion, it is common to encounter missing modalities in which matching cannot be performed. As a result, at the match score level, this implies that scores will be missing. We address the multimodal fusion problem involving missing modalities (scores) using support vector machines with the Neutral Point Substitution (NPS) method. The approach starts by processing each modality using a kernel. When a modality is missing, at the kernel level, the missing modality is substituted by one that is unbiased with regards to the classification, called a neutral point. Critically, unlike conventional missing-data substitution methods, explicit calculation of neutral points may be omitted by virtue of their implicit incorporation within the SVM training framework. Experiments based on the publicly available Biosecure DS2 multimodal (scores) data set shows that the SVM-NPS approach achieves very good generalization performance compared to the sum rule fusion, e...
Norman Poh, David Windridge, Vadim Mottl, Alexande
Added 31 Jan 2011
Updated 01 Oct 2012
Type Journal
Year 2010
Where TIFS
Authors Norman Poh, David Windridge, Vadim Mottl, Alexander Tatarchuk, Andrey Eliseyev
Comments (0)