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To show or not to show: Redacting sensitive text from videos of electronic displays
by
Biswas, Pradipta
, Agarwal, Shubham
, Zwick, Patrick Dylan
, Mukhopadhyay, Abhishek
in
Cloud computing
/ Natural language processing
/ Optical character recognition
/ Video
2022
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Do you wish to request the book?
To show or not to show: Redacting sensitive text from videos of electronic displays
by
Biswas, Pradipta
, Agarwal, Shubham
, Zwick, Patrick Dylan
, Mukhopadhyay, Abhishek
in
Cloud computing
/ Natural language processing
/ Optical character recognition
/ Video
2022
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To show or not to show: Redacting sensitive text from videos of electronic displays
Paper
To show or not to show: Redacting sensitive text from videos of electronic displays
2022
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Overview
With the increasing prevalence of video recordings there is a growing need for tools that can maintain the privacy of those recorded. In this paper, we define an approach for redacting personally identifiable text from videos using a combination of optical character recognition (OCR) and natural language processing (NLP) techniques. We examine the relative performance of this approach when used with different OCR models, specifically Tesseract and the OCR system from Google Cloud Vision (GCV). For the proposed approach the performance of GCV, in both accuracy and speed, is significantly higher than Tesseract. Finally, we explore the advantages and disadvantages of both models in real-world applications.
Publisher
Cornell University Library, arXiv.org
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