Title :
Scene Invariant Crowd Counting
Author :
Ryan, David ; Denman, Simon ; Sridharan, Sridha ; Fookes, Clinton
Author_Institution :
Image & Video Lab., Queensland Univ. of Technol., Brisbane, QLD, Australia
Abstract :
This paper describes a scene invariant crowd counting algorithm that uses local features to monitor crowd size. Unlike previous algorithms that require each camera to be trained separately, the proposed method uses camera calibration to scale between viewpoints, allowing a system to be trained and tested on different scenes. A pre-trained system could therefore be used as a turn-key solution for crowd counting across a wide range of environments. The use of local features allows the proposed algorithm to calculate local occupancy statistics, and Gaussian process regression is used to scale to conditions which are unseen in the training data, also providing confidence intervals for the crowd size estimate. A new crowd counting database is introduced to the computer vision community to enable a wider evaluation over multiple scenes, and the proposed algorithm is tested on seven datasets to demonstrate scene invariance and high accuracy. To the authors´ knowledge this is the first system of its kind due to its ability to scale between different scenes and viewpoints.
Keywords :
Gaussian processes; calibration; computer vision; feature extraction; natural scenes; object detection; regression analysis; video surveillance; Gaussian process; camera calibration; computer vision; crowd size estimation; feature extraction; pre-trained system; regression analysis; scene invariant crowd counting; statistics; Calibration; Cameras; Databases; Feature extraction; Histograms; Positron emission tomography; Training; crowd counting; crowd monitoring; density estimation; local features; scene invariant;
Conference_Titel :
Digital Image Computing Techniques and Applications (DICTA), 2011 International Conference on
Conference_Location :
Noosa, QLD
Print_ISBN :
978-1-4577-2006-2
DOI :
10.1109/DICTA.2011.46