Recognition of Facial Expression with the Help of IoT, AI and Robotics

Alka Mishra; Akash Mishra; Vandna Pathak1

1

Publication Date: 2024/07/25

Abstract: The emerging field of "Smart Face Recognition" utilizes IoT and machine learning to accurately identify individuals based on their facial characteristics. Various industries such as security, retail, and healthcare are leveraging this technology to enhance customer satisfaction and increase productivity. By combining IoT and machine learning, large amounts of data can be collected from multiple sources, such as cameras and sensors, and used to train algorithms for real-time, precise identification of individuals. This technology is gaining popularity due to its accuracy, speed, and scalability, making it essential for applications like security and access control. Recognizing human facial emotions is a key focus in today's technological landscape, with robotic applications across various sectors highlighting the importance of emotion recognition for effective human-robot interaction. This project aims to develop and implement a new automated system for emotion detection and facial recognition using Artificial Intelligence (AI) and the Internet of Things (IoT).

Keywords: Face Recognition, Emotion Detection, Artificial Intelligence, and Internet of Things.

DOI: https://doi.org/10.38124/ijisrt/IJISRT24JUL1016

PDF: https://ijirst.demo4.arinfotech.co/assets/upload/files/IJISRT24JUL1016.pdf

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