Signal-level Fusion for Indexing and Retrieval of Facial Biometric Data
Pawel Drozdowski, Fabian Stockhardt, Christian Rathgeb, Christoph, Busch

TL;DR
This paper introduces a signal-level fusion indexing method for facial biometric data that significantly reduces computational workload while maintaining identification accuracy.
Contribution
It proposes a novel multi-stage data-structure and retrieval protocol based on facial image morphing for efficient biometric database indexing.
Findings
Computational workload reduced to around 30%.
Biometric performance maintained compared to exhaustive search.
Effective in both closed-set and open-set scenarios.
Abstract
The growing scope, scale, and number of biometric deployments around the world emphasise the need for research into technologies facilitating efficient and reliable biometric identification queries. This work presents a method of indexing biometric databases, which relies on signal-level fusion of facial images (morphing) to create a multi-stage data-structure and retrieval protocol. By successively pre-filtering the list of potential candidate identities, the proposed method makes it possible to reduce the necessary number of biometric template comparisons to complete a biometric identification transaction. The proposed method is extensively evaluated on publicly available databases using open-source and commercial off-the-shelf recognition systems. The results show that using the proposed method, the computational workload can be reduced down to around 30%, while the biometric…
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