Similarity-based Text Recognition by Deeply Supervised Siamese Network
Abstract
In this paper, we propose a new text recognition model based on measuring the visual similarity of text and predicting the content of unlabeled texts. First a Siamese convolutional network is trained with deep supervision on a labeled training dataset. This network projects texts into a similarity manifold. The Deeply Supervised Siamese network learns visual similarity of texts. Then a K-nearest neighbor classifier is used to predict unlabeled text based on similarity distance to labeled texts. The performance of the model is evaluated on three datasets of machine-print and hand-written text combined. We demonstrate that the model reduces the cost of human estimation by . The error of the system is less than . The proposed model outperform conventional Siamese network by finding visually-similar barely-readable and readable text, e.g. machine-printed, handwritten, due to deep supervision. The results also demonstrate that the predicted labels are sometimes better than human labels e.g. spelling correction.
Cite
@article{arxiv.1511.04397,
title = {Similarity-based Text Recognition by Deeply Supervised Siamese Network},
author = {Ehsan Hosseini-Asl and Angshuman Guha},
journal= {arXiv preprint arXiv:1511.04397},
year = {2016}
}
Comments
Accepted for presenting at Future Technologies Conference - (FTC 2016) San Francisco, December 6-7, 2016