Predicting Movie Ratings from Audience Behaviors

 

We propose a method of representing audience behavior through facial and body motions from a single video stream, and use these features to predict the rating for feature-length movies.

March 24, 2016
IEEE Winter Conference on Applications of Computer Vision

 

Authors

Rajitha Navarathna (Disney Research/Queensland University of Technology)

Patrick Lucey (Disney Research)

Peter Carr (Disney Research)

Elizabeth Carter (Carnegie Mellon University)

Sridha Sridharan (Queensland University of Technology)

Iain Matthews (Disney Research)

Predicting Movie Ratings from Audience Behaviors

Abstract

We propose a method of representing audience behavior through facial and body motions from a single video stream and use these motions to predict the rating for feature-length movies. This is a very challenging problem as i) the movie viewing environment is dark and contains views of people at different scales and viewpoints; ii) the duration of feature-length movies is long (80-120 mins) so tracking people uninterrupted for this length of time is an unsolved problem; and iii) expressions and motions of audience members are subtle, short and sparse making labeling of activities unreliable. To circumvent these issues, we use an infra-red illuminated test-bed to obtain a visually uniform input. We then utilize motion-history features which capture the subtle movements of a person within a pre-defined volume and then form a group representation of the audience by a histogram of pair-wise correlations over small time windows. Using this group representation, we learn a movie rating classifier from crowd-sourced ratings collected by rottentomatoes.com and show our prediction capability on audiences from 30 movies across 250 subjects (> 50 hours).

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