logo
banner

Journals & Publications

Journals Publications Papers

Papers

End-to-End Online Writer Identification With Recurrent Neural Network
Mar 31, 2017Author:
PrintText Size A A

Title: End-to-End Online Writer Identification With Recurrent Neural Network  

Authors: Zhang, XY; Xie, GS; Liu, CL; Bengio, Y 

Author Full Names: Zhang, Xu-Yao; Xie, Guo-Sen; Liu, Cheng-Lin; Bengio, Yoshua 

Source: IEEE TRANSACTIONS ON HUMAN-MACHINE SYSTEMS, 47 (2):285-292; 10.1109/THMS.2016.2634921 APR 2017  

Language: English 

Abstract: Writer identification is an important topic for pattern recognition and artificial intelligence. Traditional methods rely heavily on sophisticated hand-crafted features to represent the characteristics of different writers. In this paper, we propose an end-to-end framework for online text-independent writer identification by using a recurrent neural network (RNN). Specifically, the handwriting data of a particular writer are represented by a set of random hybrid strokes (RHSs). Each RHS is a randomly sampled short sequence representing pen tip movements (xy-coordinates) and pen-down or pen-up states. RHS is independent of the content and language involved in handwriting; therefore, writer identification at the RHS level is more general and convenient than the character level or the word level, which also requires character/word segmentation. The RNN model with bidirectional long short-term memory is used to encode each RHS into a fixed-length vector for final classification. All the RHSs of a writer are classified independently, and then, the posterior probabilities are averaged to make the final decision. The proposed framework is end-to-end and does not require any domain knowledge for handwriting data analysis. Experiments on both English (133 writers) and Chinese (186 writers) databases verify the advantages of our method compared with other state-of-the-art approaches. 

ISSN: 2168-2291  

eISSN: 2168-2305  

IDS Number: EO0PY  

Unique ID: WOS:000396401600011 

*Click Here to View Full Record