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Showing all 8 results
Design of a Search and Rescue Robot Based on Fire hazards
Aim:
Ā Ā Ā Ā The Mainstay of the project isĀ to develop an autonomous firefighting robot that integrates AI for person detection, real-time video streaming, and obstacle avoidance. The system enhances firefighter safety and efficiency by providing autonomous navigation and fire suppression in hazardous environments.
Design of Wearable Device for Child Safety
Eye care device for facial paralyzed patients
IoT Sensor Initiated Healthcare Data Security
Mo-SSS: A Motorcycle Smart Security System Using Raspberry Pi Based on the Internet of Things
Aim:
Ā Ā Ā Ā The Mainstay of the project is to develop a smart motorcycle security system using Raspberry Pi and IoT, ensuring enhanced theft prevention, real-time alerts, and accident detection. The system integrates advanced features like location tracking, photo capture, and power management for efficient and secure vehicle operation.
Real-Time Object Recognition with Voice Feedback for Visually Impaired Based on Raspberry Pi
Smart Wheelchair Controlled Through a Vision-Based Autonomous System
Tree-Based Personalized Clustered Federated Learning A Driver Stress Monitoring Through Physiological Data Case Study
Aim:
Ā Ā Ā Ā Ā The aim of this study is to develop a privacy-preserving and personalized driver stress monitoring system using a Tree-Based Personalized Clustered Federated Learning (TPCFL) approach, which effectively addresses the challenges of non-IID physiological data by grouping drivers based on similarities in their data characteristics, optimizing cluster selection, and enabling accurate stress detection for both existing and new unlabeled drivers without compromising sensitive information.




