Please use this identifier to cite or link to this item: https://elibrary.khec.edu.np/handle/123456789/1016
Title: Real-Time Hand Gesture Interface for PC Control Using Computer Vision
Authors: Ankit Rawal Gyan Hari Dahal Krishna Narayan Shrestha Manish Timsina (770303) (770312) (770317) (770319)
Advisor: Er. Shiva Prasad Mahato
Keywords: Keywords: Hand Gesture Recognition, MediaPipe, TensorFlow, Long Short Term Memory (LSTM), Conv1D, Attention Mechanism, Real-Time Interaction, Computer Vision, Keypoint Extraction, PyAutoGUI, Gesture Mapping, Touchless Control.
Issue Date: 2025
College Name: Khwopa Engineering College
Level: Bachelor's Degree
Degree: BE Computer
Department Name: Department of Computer Engineering
Abstract: This project presents a real-time hand gesture recognition system designed to enable touchless human-computer interaction using a webcam. Leveraging Me diaPipe for hand landmark detection and TensorFlow for gesture classification, the system processes video frames to extract normalized keypoints, which are fed into a trained LSTM-based model (with an advanced variant incorporating Conv1D and Attention mechanisms) to classify gestures such as swipes, waves, and pinches. These gestures are mapped to computer actions like key presses and mouse movements via pyautogui, facilitating applications in browser navigation, media control, and accessibility. The project encompasses data collection, preprocessing, model training, and performance evaluation, with metrics visualized through plots of accuracy, loss, and F1 scores. Configurable through a centralized JSON file, the system achieves robust performance with a confidence threshold of 0.8 for most gestures. Results demonstrate effective real-time gesture recognition, with potential for further optimization in gesture coverage and dataset consistency
URI: https://elibrary.khec.edu.np/handle/123456789/1016
Appears in Collections:PU Computer Report

Files in This Item:
File SizeFormat 
Real-Time Hand Gesture Interface for PC Control Using Computer Vision.pdf
  Restricted Access
9.75 MBAdobe PDFView/Open Request a copy


Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.