CVMar 6, 2014

Illumination,Expression and Occlusion Invariant Pose-Adaptive Face Recognition System for Real-Time Applications

arXiv:1403.1362v17 citations
Originality Incremental advance
AI Analysis

This addresses real-time face recognition challenges for applications like security, but it is incremental as it builds on existing component-based techniques.

The paper tackles face recognition under illumination, expression, and occlusion variations by proposing a pose-adaptive component-based framework, achieving better recognition rates compared to holistic methods.

Face recognition in real-time scenarios is mainly affected by illumination, expression and pose variations and also by occlusion. This paper presents the framework for pose adaptive component-based face recognition system. The framework proposed deals with all the above mentioned issues. The steps involved in the presented framework are (i) facial landmark localisation, (ii) facial component extraction, (iii) pre-processing of facial image (iv) facial pose estimation (v) feature extraction using Local Binary Pattern Histograms of each component followed by (vi) fusion of pose adaptive classification of components. By employing pose adaptive classification, the recognition process is carried out on some part of database, based on estimated pose, instead of applying the recognition process on the whole database. Pre-processing techniques employed to overcome the problems due to illumination variation are also discussed in this paper. Component-based techniques provide better recognition rates when face images are occluded compared to the holistic methods. Our method is simple, feasible and provides better results when compared to other holistic methods.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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