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Complete Scanning Application Using OpenCv

2021-07-08 09:21:57
Ayushe Gangal, Peeyush Kumar, Sunita Kumari

Abstract

In the following paper, we have combined the various basic functionalities provided by the NumPy library and OpenCv library, which is an open source for Computer Vision applications, like conversion of colored images to grayscale, calculating threshold, finding contours and using those contour points to take perspective transform of the image inputted by the user, using Python version 3.7. Additional features include cropping, rotating and saving as well. All these functions and features, when implemented step by step, results in a complete scanning application. The applied procedure involves the following steps: Finding contours, applying Perspective transform and brightening the image, Adaptive Thresholding and applying filters for noise cancellation, and Rotation features and perspective transform for a special cropping algorithm. The described technique is implemented on various samples.

Abstract (translated)

URL

https://arxiv.org/abs/2107.03700

PDF

https://arxiv.org/pdf/2107.03700.pdf


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