Feature Vector Extraction Technique for Facial Emotion Recognition Using Facial Landmarks

12TH INTERNATIONAL CONFERENCE ON ICT CONVERGENCE (ICTC 2021): BEYOND THE PANDEMIC ERA WITH ICT CONVERGENCE INNOVATION(2021)

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摘要
The facial emotion recognition (FER) system classifies the driver's emotions and these results are crucial in the autonomous driving system (ADS). The ADS effectively utilizes the features from FER and increases its safety by preventing road accidents. In FER, the system classifies the driver's emotions into different categories such as happy, sad, angry, surprise, disgust, fear, and neutral. These emotions determine the driver's mental condition and the current mental status of the driver can give us valuable information to predict the occurrence of road accidents. Conventional FER systems use direct facial image pixel values as its input and these pixel values provide a limited number of features for training the model. The limited number of features from facial images degrade the performance of the system and it gives a higher degree of classification error. To address this problem in the conventional FER systems, we propose a feature vector extraction technique that combines the facial image pixel values with the facial landmarks and the deep learning model uses these combined features as its input. Our experiments and results show that the proposed feature vector extraction-based FER approach reduces the classification error for emotion recognition and enhances the performance of the system. The proposed FER approach achieved a classification accuracy of 99.96% and a 0.095 model loss from the ResNet architecture.
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关键词
Facial emotion recognition (FER), autonomous driving system (ADS), feature vector extraction, facial landmark detection, facial keypoints detection
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