Litcius/Paper detail

MIND-Net: A Deep Mutual Information Distillation Network for Realistic Low-Resolution Face Recognition

Cheng-Yaw Low, Andrew Beng Jin Teoh, Jaewoo Park

2021IEEE Signal Processing Letters24 citationsDOI

Abstract

Realistic low-resolution (LR) face images refer to those captured by the real-world surveillance cameras at extreme standoff distances, thereby LR and poor in quality essentially. Owing to severe scarcity of labeled data, a high-capacity deep convolution neural networks (CNN) is hardly trained to confront the realistic LR face recognition (LRFR) challenge. We introduce in this letter a dual-stream mutual information distillation network (MIND-Net), whereby the non-identity specific mutual information (MI) characterized by generic face features coexistent on realistic and synthetic LR face images are distilled to render a resolution-invariant embedding space for LRFR. For a thorough analysis, we quantify the degree of MI distillation in terms normalized MI index. Our experimental results on the realistic LR face datasets substantiate that the MIND-Net instances assembled from the pre-learned CNNs stand out from the baselines and other state of the arts by a notable margin.

Topics & Concepts

Computer scienceArtificial intelligencePattern recognition (psychology)Convolutional neural networkFace (sociological concept)DistillationEmbeddingMutual informationFacial recognition systemConvolution (computer science)Invariant (physics)Margin (machine learning)Deep learningComputer visionMachine learningArtificial neural networkMathematicsChemistrySociologyOrganic chemistrySocial scienceMathematical physicsFace recognition and analysisBiometric Identification and SecurityVideo Surveillance and Tracking Methods