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Multimodal Emotion Recognition on RAVDESS Dataset Using Transfer Learning
2021
Sensors
Emotion Recognition is attracting the attention of the research community due to the multiple areas where it can be applied, such as in healthcare or in road safety systems. In this paper, we propose a multimodal emotion recognition system that relies on speech and facial information. For the speech-based modality, we evaluated several transfer-learning techniques, more specifically, embedding extraction and Fine-Tuning. The best accuracy results were achieved when we fine-tuned the CNN-14 of
doi:10.3390/s21227665
pmid:34833739
pmcid:PMC8618559
fatcat:umfcwlktlbcq7cxtualceg7njy