2000 character limit reached
Proactive Emotion Tracker: AI-Driven Continuous Mood and Emotion Monitoring (2401.13722v1)
Published 24 Jan 2024 in cs.HC and cs.AI
Abstract: This research project aims to tackle the growing mental health challenges in today's digital age. It employs a modified pre-trained BERT model to detect depressive text within social media and users' web browsing data, achieving an impressive 93% test accuracy. Simultaneously, the project aims to incorporate physiological signals from wearable devices, such as smartwatches and EEG sensors, to provide long-term tracking and prognosis of mood disorders and emotional states. This comprehensive approach holds promise for enhancing early detection of depression and advancing overall mental health outcomes.
- A framework for quality assessment of synthesised speech using learning-based objective evaluation. Int. J. Speech Technol., 26(1):221–243, feb 2023.
- Multi-attribute decision making application using hybridly modelled gaussian interval type-2 fuzzy sets with uncertain mean. Multimedia Tools Appl., 82(4):4913–4940, apr 2022.
- Emotion recognition in vad space during emotional events using cnn-gru hybrid model on eeg signals. In International Conference on Intelligent Human Computer Interaction, pages 75–84. Springer, 2022.
- Deep fuzzy framework for emotion recognition using eeg signals and emotion representation in type-2 fuzzy vad space. arXiv preprint arXiv:2401.07892, 2024.
- Inter subject emotion recognition using spatio-temporal features from eeg signal. In 2023 27th International Computer Science and Engineering Conference (ICSEC), pages 1–4, 2023.
- Emotion recognition using temporally localized emotional events in eeg with naturalistic context: Dens dataset. IEEE Access, 11:39913–39925, 2023.
- Cardiac–brain dynamics depend on context familiarity and their interaction predicts experience of emotional arousal. Brain Sciences, 12(6):702, 2022.
- Dynamic functional connectivity of emotion processing in beta band with naturalistic emotion stimuli. Brain sciences, 12(8):1106, 2022.
- Nikhileswar Komati. Suicide and depression detection. https://www.kaggle.com/datasets/nikhileswarkomati/suicide-watch.