Semantic Segmentation of PHT Based on Improved DeeplabV3+

Author:

Fang Haiquan1ORCID

Affiliation:

1. Zhejiang University of Technology, Hangzhou 310023, China

Abstract

This work aimed to address the two shortcomings of the printed and handwritten texts (PHT) classification. The classification accuracy of FCN and U-net, which are used for PHT pixel-level classification, still has room to improve. PHT public datasets have small sample sizes, and the generalization ability of the models is not good. In this paper, first, a pixel-level sample-making method for PHT identification was proposed, and a PHT dataset 2021 (PHTD 2021), containing 3,000 samples, was constructed. Second, because there is a large number of words but the contours are small in documents, the DeeplabV3+ model was improved. The network layer number and pooling times were reduced, and the convolution kernel and dilated rate were increased. In the experiment, the improved DeeplabV3+ model had a classification accuracy of 95.06% on the test samples from the PHTD 2021 dataset. The improved DeeplabV3+ model has a higher recognition accuracy than the FCN and DeeplabV3+ models. Finally, after the classification of PHT, applications of handwritten texts removal and handwritten texts extraction are provided.

Publisher

Hindawi Limited

Subject

General Engineering,General Mathematics

Reference26 articles.

1. Separating handwritten material from machine printed text using hidden Markov models

2. Machine-Printed from Handwritten Text Discrimination

3. A typed and handwritten texts block segmentation system for heterogeneous and complex documents;P. Barlas

4. Separation of Machine-Printed and Handwritten Texts in Noisy Documents using Wavelet Transform

5. PHTI-WS: a PHT identification web service based on FCN and CRF post-processing;N. Dutly

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