4.6 Article

Deep-Learning-Based Character Recognition from Handwriting Motion Data Captured Using IMU and Force Sensors

Journal

SENSORS
Volume 22, Issue 20, Pages -

Publisher

MDPI
DOI: 10.3390/s22207840

Keywords

smart pen; handwritten character recognition; deep learning; inertial sensor; force sensor

Funding

  1. JSPS KAKENHI [JP19K043212, JP22K04012]

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In this paper, a deep-learning-based smart digital pen that recognizes 36 alphanumeric characters was developed. Handwriting recognition was achieved using hand motion data captured by an inertial force sensor. The ViT network achieved a validation accuracy of 99.05% and showed promising performance in real-time validation.
Digitizing handwriting is mostly performed using either image-based methods, such as optical character recognition, or utilizing two or more devices, such as a special stylus and a smart pad. The high-cost nature of this approach necessitates a cheaper and standalone smart pen. Therefore, in this paper, a deep-learning-based compact smart digital pen that recognizes 36 alphanumeric characters was developed. Unlike common methods, which employ only inertial data, handwriting recognition is achieved from hand motion data captured using an inertial force sensor. The developed prototype smart pen comprises an ordinary ballpoint ink chamber, three force sensors, a six-channel inertial sensor, a microcomputer, and a plastic barrel structure. Handwritten data of the characters were recorded from six volunteers. After the data was properly trimmed and restructured, it was used to train four neural networks using deep-learning methods. These included Vision transformer (ViT), DNN (deep neural network), CNN (convolutional neural network), and LSTM (long short-term memory). The ViT network outperformed the others to achieve a validation accuracy of 99.05%. The trained model was further validated in real-time where it showed promising performance. These results will be used as a foundation to extend this investigation to include more characters and subjects.

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