CVAIMay 15, 2019

Automatic Long-Term Deception Detection in Group Interaction Videos

arXiv:1905.08617v2
Originality Incremental advance
AI Analysis

This addresses the need for detecting deception in multi-person, extended interactions, though it is incremental by extending existing methods to a new setting.

The paper tackles the problem of automated deception detection in group interaction videos over long durations, achieving an AUC of over 0.70 in identifying spies in Resistance game videos.

Most work on automated deception detection (ADD) in video has two restrictions: (i) it focuses on a video of one person, and (ii) it focuses on a single act of deception in a one or two minute video. In this paper, we propose a new ADD framework which captures long term deception in a group setting. We study deception in the well-known Resistance game (like Mafia and Werewolf) which consists of 5-8 players of whom 2-3 are spies. Spies are deceptive throughout the game (typically 30-65 minutes) to keep their identity hidden. We develop an ensemble predictive model to identify spies in Resistance videos. We show that features from low-level and high-level video analysis are insufficient, but when combined with a new class of features that we call LiarRank, produce the best results. We achieve AUCs of over 0.70 in a fully automated setting. Our demo can be found at http://home.cs.dartmouth.edu/~mbolonkin/scan/demo/

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