4.7 Article

A Robust Driver Emotion Recognition Method Based on High-Purity Feature Separation

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TITS.2023.3304128

Keywords

Driver emotion recognition; feature separation; individual difference; illumination changes

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Accurately identifying driver's emotions is crucial for improving the safety and comfort in intelligent driving system, but individual differences and illumination changes pose challenges to emotion recognition. In this paper, a robust driver emotion recognition method based on feature separation is proposed, which can overcome the interference of individual differences and illumination changes. Experimental results on multiple datasets demonstrate the effectiveness of the proposed method.
Since emotions generally affect driver's behavior, judgment, and reaction time, accurately identifying driver's emotions is of great significance to improve the safety and comfort of intelligent driving system. However, the gender, skin color, age, and appearance of different drivers often have big differences, which will greatly interfere with the emotional recognition process. Besides, light intensity inside the vehicle varies with different time, weather, and location, which will also pose a challenge to driver emotion recognition. In this paper, a robust driver emotion recognition method based on feature separation is proposed to overcome the interference of individual differences and illumination changes. In order to realize the separation of expression-related features and irrelevant features, we design a high-purity feature separation (HPFS) framework based on partial feature exchange and the constraints of multiple loss functions. To verify that the proposed method can overcome the interference of illumination changes, we specifically create a multiple light intensities driver emotion recognition (MLI-DER) dataset and conduct a great deal of experiments on the dataset. In addition, to further demonstrate that our method can largely alleviate the interference of individual difference, some cross-subject emotion recognition experiments are conducted on two famous facial expression recognition datasets FACES and Oulu-CASIA and the experimental results are compared with that of some state-of-the-art methods.

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