Automated Document Orientation Correction Using Skew and Inversion Rectification with Hough Line Transformation and Machine Learning

Author:

Shafi Sadaf1,Atif Amara2,shafi Huzaib3

Affiliation:

1. Islamic University of Science and Technology

2. University of Technology Sydney

3. Cisco

Abstract

Abstract Document deskewing is a fundamental problem in document image processing. While existing methods have limitations, such as Hough Line Transformation that can deskew images upside down, and Deep Learning models that require huge amounts of human labour and computational resources and still fail to deskew while taking care of orientation, OCR-based methods also struggle to read text when it is tilted. In this paper, we propose a novel, simple, cost-effective deep learning method for fixing the skew and orientation of documents. Our approach reduces the search space for the machine learning model to predict whether an image is upside down or not, avoiding the huge search space of predicting an angle between 0 and 360. We finetuned a MobileNetV2 model, which was pre-trained on imagenet, using only 1000 images and achieved good results. This method is useful for automation-based tasks, such as data extraction using OCR technology, and can greatly reduce manual labour.

Publisher

Research Square Platform LLC

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3. Sandler,M.;Howard,A.;Zhu,M.;Zhmoginov,A.;Chen,L.C.Mobilenetv2:Invertedresidualsandlinearbottlenecks.InProceedingsoftheIEEEconferenceoncomputervisionandpatternrecognition,2018,pp.4510–4520.

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