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A joint learning method for low-light facial expression recognition

Yuanlun Xie, Jie Ou, Bihan Wen, Zitong Yu, Wenhong Tian

2025Complex & Intelligent Systems17 citationsDOIOpen Access PDF

Abstract

Existing facial expression recognition (FER) methods are mainly devoted to learning discriminative features from normal-light images. However, their performance drops sharply when they are used for low-light images. In this paper, we propose a novel low-light FER framework (termed LL-FER) that can simultaneously enhance the images and recognition tasks of low-light facial expression images. Specifically, we first meticulously design a low-light enhancement network (LLENet) to recover expressions images’ rich detail information. Then, we design a joint loss to train the LLENet with FER network in a cascade manner, so that the FER network can guide the LLENet to gradually perceive and restore discriminative features which are useful for FER during the training process. Extensive experiments show that the LLENet not only achieves competitive results both quantitatively and qualitatively, but also in the LL-FER framework, which can produce results more suitable for FER tasks, further improving the performance of the FER methods.

Topics & Concepts

Joint (building)Facial expression recognitionComputational intelligencePattern recognition (psychology)Artificial intelligenceComputer scienceExpression (computer science)Facial expressionFacial recognition systemSpeech recognitionEngineeringStructural engineeringProgramming languageVideo Surveillance and Tracking MethodsImage Enhancement TechniquesFace and Expression Recognition
A joint learning method for low-light facial expression recognition | Litcius