Affiliation:
1. Lovely Professional University, India
2. upGrad Education Private Limited, India
Abstract
Recently, there has been a notable increase in the advancement of multimodal emotion analysis systems. These systems try to get a comprehensive knowledge of human emotions by combining data from several sources, including text, voice, video, and images. This complete strategy tackles the constraints of text-only sentiment analysis, which could disregard subtle emotional expressions. This chapter examines the difficulties and approaches related to analyzing emotions utilizing many modes of data, specifically emphasizing combining data, extracting features, and ensuring scalability. This underscores the significance of creating strong fusion techniques and network architectures to integrate various data modalities efficiently. The research also explores the utilization of these systems in domains such as social media sentiment analysis and clinical evaluations, showcasing their capacity to improve decision-making and user experiences.
Reference39 articles.
1. Adele, G., Borah, A., Paranjothi, A., & Khan, M. S. (2024). A Survey and Comparative Analysis of Methods for Countering Sybil Attacks in VANETs. 2024 IEEE 14th Annual Computing and Communication Workshop and Conference (CCWC), (pp. 178–183). IEEE.
2. Blockchain technology in healthcare: A systematic review.;C. C.Agbo;Health Care,2019
3. Amin, M. R. (2020). 51\% attacks on blockchain: a solution architecture for blockchain to secure iot with proof of work. Research Gate.
4. Decentralized Innovation: Exploring the Impact of Blockchain Technology in Software Development.;O.Bodemer;Authorea Preprints,2023
5. Integrating Blockchain With Artificial Intelligence for Privacy-Preserving Recommender Systems