학술논문

A comparison of crowd commotion measures from generative models
Document Type
Conference
Source
2015 IEEE Conference on Computer Vision and Pattern Recognition Workshops (CVPRW) Computer Vision and Pattern Recognition Workshops (CVPRW), 2015 IEEE Conference on. :49-55 Jun, 2015
Subject
Computing and Processing
Signal Processing and Analysis
Computational modeling
Cameras
Feature extraction
Histograms
Surveillance
Context
Video sequences
Language
ISSN
2160-7508
2160-7516
Abstract
Detecting abnormal events in video sequences is a challenging task that has been broadly investigated over the last decade. The main challenges come from the lack of a clear definition of abnormality and from the scarcity, often absence, of abnormal training samples. To address these two shortages, the computer vision community made use of generative models to learn normal behavioral patterns in videos. Then, for each test observation, a (crowd) commotion measure is computed quantifying the deviation from the normal model. In this paper, we evaluated two different families of generative models, namely topic models, representing the standard choice, and the most recent Counting Grids which have never been considered for this task. Moreover, we also extended the 2D Counting Grid, introduced for the analysis of images, to three dimensions, making the model able to capture the spatial-temporal relationships of the videos. In the experimental section, we compared all the approaches on five challenging sequences showing the superiority of the 3-D counting grid.