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 features 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 still 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 infrared 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 a small-window of time. Using this group representation, we learn our 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 hrs).
BibTeX
@conference{Navarathna-2014-122478,author = {Rajitha Navarathna and Patrick Lucey and Peter Carr and Elizabeth Carter and Sridha Sridharan and Iain Matthews},
title = {Predicting movie ratings from audience behaviors},
booktitle = {Proceedings of IEEE Winter Conference on Applications of Computer Vision (WACV '14)},
year = {2014},
month = {March},
pages = {1058 - 1065},
}