Misleading metadata detection on YouTube

P Palod, A Patwari, S Bahety, S Bagchi… - Advances in Information …, 2019 - Springer
Advances in Information Retrieval: 41st European Conference on IR Research …, 2019Springer
YouTube is the leading social media platform for sharing videos. As a result, it is plagued
with misleading content that includes staged videos presented as real footages from an
incident, videos with misrepresented context and videos where audio/video content is
morphed. We tackle the problem of detecting such misleading videos as a supervised
classification task. We develop UCNet-a deep network to detect fake videos and perform our
experiments on two datasets-VAVD created by us and publicly available FVC [8]. We …
Abstract
YouTube is the leading social media platform for sharing videos. As a result, it is plagued with misleading content that includes staged videos presented as real footages from an incident, videos with misrepresented context and videos where audio/video content is morphed. We tackle the problem of detecting such misleading videos as a supervised classification task. We develop UCNet - a deep network to detect fake videos and perform our experiments on two datasets - VAVD created by us and publicly available FVC [8]. We achieve a macro averaged F-score of 0.82 while training and testing on a 70:30 split of FVC, while the baseline model scores 0.36. We find that the proposed model generalizes well when trained on one dataset and tested on the other.
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