Author : Yoheswari S
Page No: 383 - 388
Abstract : Emotion detection and management have emerged as pivotal areas in human-computer interaction, offering potential applications in healthcare, entertainment, and customer service. This study explores the use of deep learning (DL) models to enhance emotion recognition accuracy and enable effective emotion regulation mechanisms. By leveraging large datasets of facial expressions, voice tones, and physiological signals, we train deep neural networks to recognize a wide array of emotions with high precision. The proposed system integrates emotion recognition with adaptive management strategies that provide personalized feedback and interventions based on detected emotional states. Our approach surpasses traditional machine learning methods, demonstrating superior performance in real-time applications. We also explore the ethical implications and challenges associated with deploying such systems, particularly regarding privacy concerns and the potential for misuse. Through extensive experiments, our model achieved an average accuracy rate of 92%, highlighting its robustness across different environments and user demographics. This research not only contributes to the growing field of affective computing but also lays the groundwork for future developments in emotionally intelligent systems.
Keyword Emotion Recognition, Deep Learning, Affective Computing, Human-Computer Interaction, Emotion Management
Reference:

1. Ramesh, G., Gorantla, V. A. K., & Gude, V. (2023). A hybrid methodology with learning based approach for protecting systems from DDoS attacks. Journal of Discrete Mathematical Sciences and Cryptography, 26(5), 1317-1325.
2. Logeshwaran, J., Gorantla, V. A. K., Gude, V., & Gorantla, B. (2023, September). The Smart Performance Analysis of Cyber Security Issues in Crypto Currency Using Blockchain. In 2023 6th International Conference on Contemporary Computing and Informatics (IC3I) (Vol. 6, pp. 2235-2241). IEEE.
3. Komatireddy, S. R., Meghana, K., Gude, V., & Ramesh, G. (2023, December). Facial Shape Analysis and Accessory Recommendation: A Human-Centric AI Approach. In 2023 3rd International Conference on Innovative Mechanisms for Industry Applications (ICIMIA) (pp. 182-191). IEEE.
4. Sriramulugari, S. K., Gorantla, V. A. K., Gude, V., Gupta, K., & Yuvaraj, N. (2024, March). Exploring mobility and scalability of cloud computing servers using logical regression framework. In 2024 2nd International Conference on Disruptive Technologies (ICDT) (pp. 488-493). IEEE.
5. Gorantla, V. A. K., Gude, V., Sriramulugari, S. K., Yuvaraj, N., & Yadav, P. (2024, March). Utilizing hybrid cloud strategies to enhance data storage and security in e-commerce applications. In 2024 2nd International Conference on Disruptive Technologies (ICDT) (pp. 494-499). IEEE.
6. Bharathi, G. P., Chandra, I., Sanagana, D. P. R., Tummalachervu, C. K., Rao, V. S., & Neelima, S. (2024). AI-driven adaptive learning for enhancing business intelligence simulation games. Entertainment Computing, 50, 100699.
7. Sanagana, D. P. R., & Tummalachervu, C. K. (2024, May). Securing Cloud Computing Environment via Optimal Deep Learning-based Intrusion Detection Systems. In 2024 Second International Conference on Data Science and Information System (ICDSIS) (pp. 1-6). IEEE.
8. Sivaramkumar, V., Thansekhar, M. R., Saravanan, R., & Miruna Joe Amali, S. (2017). Multi-objective vehicle routing problem with time windows: Improving customer satisfaction by considering gap time. Proceedings of the Institution of Mechanical Engineers, Part B: Journal of Engineering Manufacture, 231(7), 1248-1263.
9. Reka, R., R. Karthick, R. Saravana Ram, and Gurkirpal Singh. “Multi head self-attention gated graph convolutional network based multi‑attack intrusion detection in MANET.” Computers & Security 136 (2024): 103526.
10. Meenalochini, P., R. Karthick, and E. Sakthivel. “An Efficient Control Strategy for an Extended Switched Coupled Inductor Quasi-Z-Source Inverter for 3 Φ Grid Connected System.” Journal of Circuits, Systems and Computers 32.11 (2023): 2450011.
11. Karthick, R., et al. “An optimal partitioning and floor planning for VLSI circuit design based on a hybrid bio-inspired whale optimization and adaptive bird swarm optimization (WO-ABSO) algorithm.” Journal of Circuits, Systems and Computers 32.08 (2023): 2350273.
12. Rajagopal RK, Karthick R, Meenalochini P, Kalaichelvi T. Deep Convolutional Spiking Neural Network optimized with Arithmetic optimization algorithm for lung disease detection using chest X-ray images. Biomedical Signal Processing and Control. 2023 Jan 1;79:104197.
13. Karthick, R., and P. Meenalochini. “Implementation of data cache block (DCB) in shared processor using field-programmable gate array (FPGA).” Journal of the National Science Foundation of Sri Lanka 48.4 (2020).
14. Karthick, R., A. Senthilselvi, P. Meenalochini, and S. Senthil Pandi. “Design and analysis of linear phase finite impulse response filter using water strider optimization algorithm in FPGA.” Circuits, Systems, and Signal Processing 41, no. 9 (2022): 5254-5282.
15. Karthick, R., and M. Sundararajan. “SPIDER-based out-of-order execution scheme for HtMPSOC.” International Journal of Advanced Intelligence paradigms 19.1 (2021): 28-41.
16. Karthick, R., Dawood, M.S. & Meenalochini, P. Analysis of vital signs using remote photoplethysmography (RPPG). J Ambient Intell Human Comput 14, 16729–16736 (2023). https://doi.org/10.1007/s12652-023-04683-w
17. Kiran, A., Kalpana, V., Madanan, M., Ramesh, J. V. N., Alfurhood, B. S., & Mubeen, S. (2023). Anticipating network failures and congestion in optical networks a data analytics approach using genetic algorithm optimization. Optical and Quantum Electronics, 55(13), 1193.
18. Lalithambigai, M., Kalpana, V., Kumar, A. S., Uthayakumar, J., Santhosh, J., & Mahaveerakannan, R. (2023, February). Dimensionality reduction with DLMNN technique for handling secure medical data in healthcare-IoT model. In 2023 Third International Conference on Artificial Intelligence and Smart Energy (ICAIS) (pp. 111-117). IEEE.
19. Kalpana, V., Mishra, D. K., Chanthirasekaran, K., Haldorai, A., Nath, S. S., & Saraswat, B. K. (2022). On reducing energy cost consumption in heterogeneous cellular networks using optimal time constraint algorithm. Optik, 270, 170008.
20. Kalpana, V., & Karthik, S. (2020). Route availability with QoE and QoS metrics for data analysis of video stream over a mobile ad hoc networks. Wireless Personal Communications, 114(3), 2591-2612.
21. Kalpana, V., & Karthik, S. (2018, February). Bandwidth Constrained Priority Based Routing Algorithm for Improving the Quality of Service in Mobile Ad hoc Networks. In 2018 International Conference on Soft-computing and Network Security (ICSNS) (pp. 1-8). IEEE.