Title :
Complex Activity Recognition Using Granger Constrained DBN (GCDBN) in Sports and Surveillance Video
Author :
Swears, Eran ; Hoogs, Anthony ; Qiang Ji ; Boyer, Kim
Author_Institution :
Kitware Inc., USA
Abstract :
Modeling interactions of multiple co-occurring objects in a complex activity is becoming increasingly popular in the video domain. The Dynamic Bayesian Network (DBN) has been applied to this problem in the past due to its natural ability to statistically capture complex temporal dependencies. However, standard DBN structure learning algorithms are generatively learned, require manual structure definitions, and/or are computationally complex or restrictive. We propose a novel structure learning solution that fuses the Granger Causality statistic, a direct measure of temporal dependence, with the Adaboost feature selection algorithm to automatically constrain the temporal links of a DBN in a discriminative manner. This approach enables us to completely define the DBN structure prior to parameter learning, which reduces computational complexity in addition to providing a more descriptive structure. We refer to this modeling approach as the Granger Constraints DBN (GCDBN). Our experiments show how the GCDBN outperforms two of the most relevant state-of-the-art graphical models in complex activity classification on handball video data, surveillance data, and synthetic data.
Keywords :
belief networks; computational complexity; feature selection; image classification; learning (artificial intelligence); object recognition; sport; video surveillance; Adaboost feature selection algorithm; GCDBN; Granger causality statistic; Granger constrained DBN; co-occurring object; complex activity classification; complex activity recognition; complex temporal dependency; computational complexity reduction; dynamic Bayesian network; graphical model; handball video data; interaction modeling; parameter learning; sports; standard DBN structure learning algorithm; surveillance data; surveillance video; synthetic data; temporal dependence measure; temporal link; Cities and towns; Classification algorithms; Computational modeling; Graphical models; Hidden Markov models; Oceans; Surveillance; activity recognition; causality; graphical models; structure learning;
Conference_Titel :
Computer Vision and Pattern Recognition (CVPR), 2014 IEEE Conference on
Conference_Location :
Columbus, OH
DOI :
10.1109/CVPR.2014.106