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Yang, Hyun Jong
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Privacy-preserving human activity recognition from extreme low resolution

Author(s)
Ryoo, Michael S.Rothrock, BrandonFleming, CharlesYang, Hyun Jong
Issued Date
2017-02-05
URI
https://scholarworks.unist.ac.kr/handle/201301/32777
Citation
AAAI Conference on Artificial Intelligence, pp.4255 - 4262
Abstract
Privacy protection from surreptitious video recordings is an important societal challenge. We desire a computer vision system (e.g., a robot) that can recognize human activities and assist our daily life, yet ensure that it is not recording video that may invade our privacy. This paper presents a fundamental approach to address such contradicting objectives: human activity recognition while only using extreme low-resolution (e.g., 16x12) anonymized videos. We introduce the paradigm of inverse super resolution (ISR), the concept of learning the optimal set of image transformations to generate multiple low-resolution (LR) training videos from a single video. Our ISR learns different types of sub-pixel transformations optimized for the activity classification, allowing the classifier to best take advantage of existing high-resolution videos (e.g., YouTube videos) by creating multiple LR training videos tailored for the problem. We experimentally confirm that the paradigm of inverse super resolution is able to benefit activity recognition from extreme low-resolution videos.
Publisher
AAAI

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