4.7 Article

Deep Learning-Based Sign Language Digits Recognition From Thermal Images With Edge Computing System

期刊

IEEE SENSORS JOURNAL
卷 21, 期 9, 页码 10445-10453

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JSEN.2021.3061608

关键词

Gesture recognition; Cameras; Pins; Integrated circuit modeling; Assistive technology; Three-dimensional displays; Lighting; Thermal imaging; gesture recognition; embedded systems; deep learning; neural networks; contactless applications; sign language digits

资金

  1. Indo-Norwegian collaboration in Autonomous Cyber-Physical Systems (INCAPS) of International Partnerships for Excellent Education, Research and Innovation (INTPART) program from the Research Council of Norway [287918]

向作者/读者索取更多资源

The study introduces a complete edge computing system for accurate hand gesture classification from thermal images. By utilizing a low-resolution thermal camera to capture real-time images and a deep learning model, the system achieves an accuracy of 99.52% on test data set. Additionally, the classification accuracy remains invariant to background lighting conditions due to its reliance on thermal imaging.
The sign language digits based on hand gestures have been utilized in various applications such as human-computer interaction, robotics, health and medical systems, health assistive technologies, automotive user interfaces, crisis management and disaster relief, entertainment, and contactless communication in smart devices. The color and depth cameras are commonly deployed for hand gesture recognition, but the robust classification of hand gestures under varying illumination is still a challenging task. This work presents the design and deployment of a complete end-to-end edge computing system that can accurately provide the classification of hand gestures captured from thermal images. A thermal dataset of 3200 images was created with each sign language digit having 320 thermal images. The solution presented here utilizes live images taken from a low-resolution thermal camera of 32 x 32 pixels, feeding into a novel light weight deep learning model based on bottleneck motivated from deep residual learning for classification of hand gestures. The edge computing system presented here utilizes Raspberry pi with a thermal camera making it highly portable. The designed system achieves an accuracy of 99.52% on the test data set with an added advantage of accuracy being invariable to background lighting conditions as it is based on thermal imaging.

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