Sensors (Jun 2021)

Egocentric-View Fingertip Detection for Air Writing Based on Convolutional Neural Networks

  • Yung-Han Chen,
  • Chi-Hsuan Huang,
  • Sin-Wun Syu,
  • Tien-Ying Kuo,
  • Po-Chyi Su

DOI
https://doi.org/10.3390/s21134382
Journal volume & issue
Vol. 21, no. 13
p. 4382

Abstract

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This research investigated real-time fingertip detection in frames captured from the increasingly popular wearable device, smart glasses. The egocentric-view fingertip detection and character recognition can be used to create a novel way of inputting texts. We first employed Unity3D to build a synthetic dataset with pointing gestures from the first-person perspective. The obvious benefits of using synthetic data are that they eliminate the need for time-consuming and error-prone manual labeling and they provide a large and high-quality dataset for a wide range of purposes. Following that, a modified Mask Regional Convolutional Neural Network (Mask R-CNN) is proposed, consisting of a region-based CNN for finger detection and a three-layer CNN for fingertip location. The process can be completed in 25 ms per frame for 640×480 RGB images, with an average error of 8.3 pixels. The speed is high enough to enable real-time “air-writing”, where users are able to write characters in the air to input texts or commands while wearing smart glasses. The characters can be recognized by a ResNet-based CNN from the fingertip trajectories. Experimental results demonstrate the feasibility of this novel methodology.

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