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ActiveNet: A computer-vision based approach to determine lethargy

2020-10-26 16:54:03
Aitik Gupta, Aadit Agarwal

Abstract

The outbreak of COVID-19 has forced everyone to stay indoors, fabricating a significant drop in physical activeness. Our work is constructed upon the idea to formulate a backbone mechanism, to detect levels of activeness in real-time, using a single monocular image of a target person. The scope can be generalized under many applications, be it in an interview, online classes, security surveillance, et cetera. We propose a Computer Vision based multi-stage approach, wherein the pose of a person is first detected, encoded with a novel approach, and then assessed by a classical machine learning algorithm to determine the level of activeness. An alerting system is wrapped around the approach to provide a solution to inhibit lethargy by sending notification alerts to individuals involved.

Abstract (translated)

URL

https://arxiv.org/abs/2010.13714

PDF

https://arxiv.org/pdf/2010.13714.pdf


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