CONF Purohit_INTERSPEECH_2023/IDIAP Implicit phonetic information modeling for speech emotion recognition Purohit, Tilak Vlasenko, Bogdan Magimai.-Doss, Mathew fine-tuning Phonetic information self-supervised learning Speech Emotion Recognition EXTERNAL https://publications.idiap.ch/attachments/papers/2023/Purohit_INTERSPEECH_2023.pdf PUBLIC Interspeech Dublin, Ireland 2023 ISCA This study investigates the efficacy of utilizing embedding spaces to model phonetic information in emotion utterances for speech emotion recognition. Our approach involves implicit modeling of phone information by deriving phone-based embeddings from networks specifically trained for phone recognition and pre-trained models fine-tuned for phone/character recognition. The results from evaluating our approach on three speech emotion databases, using both intra-corpus and inter-corpus evaluation methods demonstrate the competitive performance of implicit modeling of phonetic information compared to knowledge-based handcrafted features.