3D hand pose estimation using a wrist-worn camera

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Credit: ACM, UIST

Researchers at Tokyo Institute of Technology (Tokyo Tech) working in collaboration with colleagues at Carnegie Mellon University, the University of St Andrews and the University of New South Wales have developed a wrist-worn device for 3D hand pose estimation. The system consists of a camera that captures images of the back of the hand, and is supported by a neural network called DorsalNet which can accurately recognize dynamic gestures.

Being able to track hand gestures is of crucial importance in advancing augmented reality (AR) and virtual reality (VR) devices that are already beginning to be much in demand in the medical, sports and entertainment sectors. To date, these devices have involved using bulky data gloves which tend to hinder natural movement or controllers with a limited range of sensing.

Now, a research team led by Hideki Koike at Tokyo Tech has devised a camera-based wrist-worn 3D hand pose recognition system which could in future be on par with a smartwatch. Their system can importantly allow capture of hand motions in mobile settings.

“This work is the first vision-based real-time 3D hand pose estimator using visual features from the dorsal hand region,” the researchers say. The system consists of a camera supported by a neural network named DorsalNet which can accurately estimate 3D hand poses by detecting changes in the back of the hand.

The researchers confirmed that their system outperforms previous work with an average of 20% higher accuracy in recognizing dynamic gestures, and achieves a 75% accuracy of detecting eleven different grasp types.

The work could advance the development of controllers that support bare-hand interaction. In preliminary tests, the researchers demonstrated that it would be possible to use their system for smart devices control, for example, changing the time on a smartwatch simply by changing finger angle. They also showed it would be possible to use the system as a virtual mouse or keyboard, for example by rotating the wrist to control the position of the pointer and using a simple 8-key keyboard for typing input.

They point out that further improvements to the system such as using a camera with a higher frame rate to capture fast wrist movement and being able to deal with more diverse lighting conditions will be needed for real world use.

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Their findings will be presented at the 33rd ACM User Interface Software and Technology Symposium, a leading forum for innovations in human-computer interfaces, to be held in Minneapolis on 21 October 2020. This year’s program will take place entirely online across Zoom.

[References]

Session 15B: Sensing Hands (Friday, October 23, 9:55-10:15 CDT/UTC-5)

https://uist.acm.org/uist2020/program.html

Title: Back-Hand-Pose: 3D Hand Pose Estimation for a Wrist-worn Camera via Dorsum Deformation Network

Conference: ACM User Interface Software and Technology 2020(UIST2020).

https://uist.acm.org/uist2020/

[Related link]

KOIKE LABORATORY

https://www.vogue.cs.titech.ac.jp/

[About Tokyo Institute of Technology]

Tokyo Tech stands at the forefront of research and higher education as the leading university for science and technology in Japan. Tokyo Tech researchers excel in fields ranging from materials science to biology, computer science, and physics. Founded in 1881, Tokyo Tech hosts over 10,000 undergraduate and graduate students per year, who develop into scientific leaders and some of the most sought-after engineers in industry. Embodying the Japanese philosophy of “monotsukuri,” meaning “technical ingenuity and innovation,” the Tokyo Tech community strives to contribute to society through high-impact research.

https://www.titech.ac.jp/english/

Media Contact
Emiko Kawaguchi
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Original Source

https://www.titech.ac.jp/english/news/2020/048107.html

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