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Main Authors: Wu, Yuli, Hu, Yucheng, Miao, Suting
Format: Preprint
Published: 2021
Subjects:
Online Access:https://arxiv.org/abs/2106.14989
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author Wu, Yuli
Hu, Yucheng
Miao, Suting
author_facet Wu, Yuli
Hu, Yucheng
Miao, Suting
contents We present an object detection based approach to localize handwritten regions from documents, which initially aims to enhance the anonymization during the data transmission. The concatenated fusion of original and preprocessed images containing both printed texts and handwritten notes or signatures are fed into the convolutional neural network, where the bounding boxes are learned to detect the handwriting. Afterwards, the handwritten regions can be processed (e.g. replaced with redacted signatures) to conceal the personally identifiable information (PII). This processing pipeline based on the deep learning network Cascade R-CNN works at 10 fps on a GPU during the inference, which ensures the enhanced anonymization with minimal computational overheads. Furthermore, the impressive generalizability has been empirically showcased: the trained model based on the English-dominant dataset works well on the fictitious unseen invoices, even in Chinese. The proposed approach is also expected to facilitate other tasks such as handwriting recognition and signature verification.
format Preprint
id arxiv_https___arxiv_org_abs_2106_14989
institution arXiv
publishDate 2021
record_format arxiv
spellingShingle Object Detection Based Handwriting Localization
Wu, Yuli
Hu, Yucheng
Miao, Suting
Computer Vision and Pattern Recognition
We present an object detection based approach to localize handwritten regions from documents, which initially aims to enhance the anonymization during the data transmission. The concatenated fusion of original and preprocessed images containing both printed texts and handwritten notes or signatures are fed into the convolutional neural network, where the bounding boxes are learned to detect the handwriting. Afterwards, the handwritten regions can be processed (e.g. replaced with redacted signatures) to conceal the personally identifiable information (PII). This processing pipeline based on the deep learning network Cascade R-CNN works at 10 fps on a GPU during the inference, which ensures the enhanced anonymization with minimal computational overheads. Furthermore, the impressive generalizability has been empirically showcased: the trained model based on the English-dominant dataset works well on the fictitious unseen invoices, even in Chinese. The proposed approach is also expected to facilitate other tasks such as handwriting recognition and signature verification.
title Object Detection Based Handwriting Localization
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2106.14989