Air Pose Canvas with Hand Pose Estimation using Machine Learning

Authors

  • Heena Ansari SAM Global University, Bhopal, India Author
  • Aryan Dakhore SAM Global University, Bhopal, India Author
  • Aditya Paunikar SAM Global University, Bhopal, India Author
  • Aryan Khobragade SAM Global University, Bhopal, India Author
  • Nishant Ramteke SAM Global University, Bhopal, India Author
  • Pallavi Sambhare SAM Global University, Bhopal, India Author

Keywords:

Air Pose Canvas, Hand Pose Estimation, Machine Learning, Gesture Recognition, Digital Interaction

Abstract

The Air Pose Canvas with Hand Pose Estimation and Machine Learning is a transformative technology that re-imagines digital interaction by combining the power of machine learning, computer vision, and natural hand gestures. This innovative system enables users to create, draw, and interact with digital content using their hands as the primary input device. Hand pose estimation, powered by advanced machine learning models, accurately tracks hand movements and gestures in real-time, providing a seamless and intuitive user experience. This groundbreaking technology has broad applications across various domains, including artistic expression, virtual reality, education, healthcare, gaming, and accessibility. Users can sculpt, draw, and precisely manipulate digital content, making it a valuable tool for artists, educators, therapists, and individuals with disabilities. It enhances accessibility and inclusivity by offering a natural interface for individuals with diverse abilities. As technology advances, the “Air Pose Canvas” opens up exciting possibilities for immersive virtual and augmented reality experiences, collaborative workspaces, and intelligent assistance through artificial intelligence integration. It represents the future of human-computer interaction, where physical gestures become a powerful medium for creative expression and interaction with the digital world. This abstract explores the key components and significance of the “Air Pose Canvas” while highlighting its potential to reshape digital interaction across various applications and industries.

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Published

2024-04-05

How to Cite

Air Pose Canvas with Hand Pose Estimation using Machine Learning. (2024). International Journal of Innovative Research in Technology and Science, 12(2), 227-234. https://ijirts.org/index.php/ijirts/article/view/34

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