Applied Sciences (Jul 2022)

Handwriting Recognition Based on 3D Accelerometer Data by Deep Learning

  • Pedro Lopez-Rodriguez,
  • Juan Gabriel Avina-Cervantes,
  • Jose Luis Contreras-Hernandez,
  • Rodrigo Correa,
  • Jose Ruiz-Pinales

DOI
https://doi.org/10.3390/app12136707
Journal volume & issue
Vol. 12, no. 13
p. 6707

Abstract

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Online handwriting recognition has been the subject of research for many years. Despite that, a limited number of practical applications are currently available. The widespread use of devices such as smartphones, smartwatches, and tablets has not been enough to convince the user to use pen-based interfaces. This implies that more research on the pen interface and recognition methods is still necessary. This paper proposes a handwritten character recognition system based on 3D accelerometer signal processing using Convolutional Neural Networks (CNN) and Long Short-Term Memory (LSTM). First, a user wearing an MYO armband on the forearm writes a multi-stroke freestyle character on a touchpad by using the finger or a pen. Next, the 3D accelerometer signals generated during the writing process are fed into a CNN, LSTM, or CNN-LSTM network for recognition. The convolutional backbone obtains spatial features in order to feed an LSTM that extracts short-term temporal information. The system was evaluated on a proprietary dataset of 3D accelerometer data collected from multiple users with an armband device, corresponding to handwritten English lowercase letters (a–z) and digits (0–9) in a freestyle. The results show that the proposed system overcomes other systems from the state of the art by 0.53%.

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