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Implementation of Emotions in Artificial Intelligence

Arya Kumar Gopal, Harshavardhan G Astagi, Bharath V, Krishna Bharadwaj M S Bharadwaj M S, Dr. Rajesh Kumar Sahu, Dr. Deepak NR

Abstract


The integration of emotions into Artificial Intelligence (AI) systems has gained increasing attention in recent years, with applications ranging from human-computer interaction to healthcare. The concept of Emotion AI, or Affective Computing, allows AI systems to recognize, simulate, and respond to human emotions, making interactions more natural and empathetic. This paper explores the state-of-the-art methods used in emotion recognition, the diverse applications of emotion-aware AI, and the challenges and ethical concerns associated with its development. The research focuses on techniques such as facial expression recognition, speech emotion detection, sentiment analysis, and deep learning models, all emerging after 2022. Moreover, this paper discusses the transformative impact of emotion AI in sectors like healthcare, robotics, education, and customerservice. Finally, it addresses the ethical issues of privacy, manipulation, and the humanization of AI.

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