Hybrid second-order gradient histogram based global low-rank sparse regression for robust face recognition
Hongxia Li, Ying Ji, Yongxin Dong, Yuehua Feng

TL;DR
This paper introduces a novel face recognition method combining second-order geometric features with low-rank sparse regression, significantly improving robustness against occlusion and illumination variations.
Contribution
It proposes the Hybrid second-order gradient Histogram (H2H) descriptor and integrates it into a low-rank sparse regression framework, enhancing feature representation and structured noise modeling.
Findings
Outperforms state-of-the-art methods in recognition accuracy
Demonstrates robustness against occlusion and illumination changes
Achieves higher computational efficiency
Abstract
Low-rank sparse regression models have been widely adopted in face recognition due to their robustness against occlusion and illumination variations. However, existing methods often suffer from insufficient feature representation and limited modeling of structured corruption across samples. To address these issues, this paper proposes a Hybrid second-order gradient Histogram based Global Low-Rank Sparse Regression (H2H-GLRSR) model. First, we propose the Histogram of Oriented Hessian (HOH) to capture second-order geometric characteristics such as curvature and ridge patterns. By fusing HOH and first-order gradient histograms, we construct a unified local descriptor, termed the Hybrid second-order gradient Histogram (H2H), which enhances structural discriminability under challenging conditions. Subsequently, the H2H features are incorporated into an extended version of the Sparse…
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Taxonomy
TopicsFace and Expression Recognition · Face recognition and analysis · Emotion and Mood Recognition
