Robust and Efficient Writer-Independent IMU-Based Handwriting Recognition
Robust and Efficient Writer-Independent IMU-Based Handwriting Recognition
Online handwriting recognition (HWR) using data from inertial measurement units (IMUs) remains challenging due to variations in writing styles and the limited availability of annotated datasets. Previous approaches often struggle with handwriting from unseen writers, making writer-independent (WI) recognition a crucial yet difficult problem. This paper presents an HWR model designed to improve WI HWR on IMU data, using a CNN encoder and a BiLSTM-based decoder. Our approach demonstrates strong robustness to unseen handwriting styles, outperforming existing methods on the WI splits of both the public OnHW dataset and our word-based dataset, achieving character error rates (CERs) of 7.37\% and 9.44\%, and word error rates (WERs) of 15.12\% and 32.17\%, respectively. Robustness evaluation shows that our model maintains superior accuracy across different age groups, and knowledge learned from one group generalizes better to another. Evaluation on our sentence-based dataset further demonstrates its potential in recognizing full sentences. Through comprehensive ablation studies, we show that our design choices lead to a strong balance between performance and efficiency. These findings support the development of more adaptable and scalable HWR systems for real-world applications.
Jindong Li、Tim Hamann、Jens Barth、Peter Kämpf、Dario Zanca、Björn Eskofier
计算技术、计算机技术
Jindong Li,Tim Hamann,Jens Barth,Peter Kämpf,Dario Zanca,Björn Eskofier.Robust and Efficient Writer-Independent IMU-Based Handwriting Recognition[EB/OL].(2025-07-10)[2025-07-16].https://arxiv.org/abs/2502.20954.点此复制
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