Publication | Closed Access
Dynamic Feature Learning for Partial Face Recognition
66
Citations
36
References
2018
Year
Unknown Venue
Face DetectionFacial Recognition SystemImage AnalysisMachine VisionMachine LearningDynamic Feature LearningPattern RecognitionUnconstrained EnvironmentBiometricsFace ImageEngineeringFeature LearningFacial Expression RecognitionComputer ScienceDeep LearningPartial Face RecognitionComputer Vision
Partial face recognition (PFR) in unconstrained environment is a very important task, especially in video surveillance, mobile devices, etc. However, a few studies have tackled how to recognize an arbitrary patch of a face image. This study combines Fully Convolutional Network (FCN) with Sparse Representation Classification (SRC) to propose a novel partial face recognition approach, called Dynamic Feature Matching (DFM), to address partial face images regardless of size. Based on DFM, we propose a sliding loss to optimize FCN by reducing the intra-variation between a face patch and face images of a subject, which further improves the performance of DFM. The proposed DFM is evaluated on several partial face databases, including LFW, YTF and CASIA-NIR-Distance databases. Experimental results demonstrate the effectiveness and advantages of DFM in comparison with state-of-the-art PFR methods.
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