Benchmarking online sequence-to-sequence and character-based handwriting recognition from IMU-enhanced pens

Author:

Ott FelixORCID,Rügamer DavidORCID,Heublein LucasORCID,Hamann Tim,Barth JensORCID,Bischl BerndORCID,Mutschler ChristopherORCID

Abstract

AbstractHandwriting is one of the most frequently occurring patterns in everyday life and with it comes challenging applications such as handwriting recognition, writer identification and signature verification. In contrast to offline HWR that only uses spatial information (i.e., images), online HWR uses richer spatio-temporal information (i.e., trajectory data or inertial data). While there exist many offline HWR datasets, there are only little data available for the development of OnHWR methods on paper as it requires hardware-integrated pens. This paper presents data and benchmark models for real-time sequence-to-sequence learning and single character-based recognition. Our data are recorded by a sensor-enhanced ballpoint pen, yielding sensor data streams from triaxial accelerometers, a gyroscope, a magnetometer and a force sensor at 100 Hz. We propose a variety of datasets including equations and words for both the writer-dependent and writer-independent tasks. Our datasets allow a comparison between classical OnHWR on tablets and on paper with sensor-enhanced pens. We provide an evaluation benchmark for seq2seq and single character-based HWR using recurrent and temporal convolutional networks and transformers combined with a connectionist temporal classification (CTC) loss and cross-entropy (CE) losses. Our convolutional network combined with BiLSTMs outperforms transformer-based architectures, is on par with InceptionTime for sequence-based classification tasks and yields better results compared to 28 state-of-the-art techniques. Time-series augmentation methods improve the sequence-based task, and we show that CE variants can improve the single classification task. Our implementations together with the large benchmark of state-of-the-art techniques of novel OnHWR datasets serve as a baseline for future research in the area of OnHWR on paper.

Funder

Fraunhofer-Institut für Integrierte Schaltungen IIS

Publisher

Springer Science and Business Media LLC

Subject

Computer Science Applications,Computer Vision and Pattern Recognition,Software

Cited by 5 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Improving accuracy and explainability of online handwritten character recognition;International Journal on Document Analysis and Recognition (IJDAR);2023-12-19

2. Online handwriting trajectory reconstruction from kinematic sensors using temporal convolutional network;International Journal on Document Analysis and Recognition (IJDAR);2023-05-17

3. Auxiliary Cross-Modal Representation Learning With Triplet Loss Functions for Online Handwriting Recognition;IEEE Access;2023

4. Representation Learning for Tablet and Paper Domain Adaptation in Favor of Online Handwriting Recognition;Pattern Recognition, Computer Vision, and Image Processing. ICPR 2022 International Workshops and Challenges;2023

5. Domain Adaptation for Time-Series Classification to Mitigate Covariate Shift;Proceedings of the 30th ACM International Conference on Multimedia;2022-10-10

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