Crowd Counting Using Multiple Local Features


Autoria(s): Ryan, David; Denman, Simon; Fookes, Clinton B.; Sridharan, Sridha
Data(s)

03/12/2009

Resumo

In public venues, crowd size is a key indicator of crowd safety and stability. Crowding levels can be detected using holistic image features, however this requires a large amount of training data to capture the wide variations in crowd distribution. If a crowd counting algorithm is to be deployed across a large number of cameras, such a large and burdensome training requirement is far from ideal. In this paper we propose an approach that uses local features to count the number of people in each foreground blob segment, so that the total crowd estimate is the sum of the group sizes. This results in an approach that is scalable to crowd volumes not seen in the training data, and can be trained on a very small data set. As a local approach is used, the proposed algorithm can easily be used to estimate crowd density throughout different regions of the scene and be used in a multi-camera environment. A unique localised approach to ground truth annotation reduces the required training data is also presented, as a localised approach to crowd counting has different training requirements to a holistic one. Testing on a large pedestrian database compares the proposed technique to existing holistic techniques and demonstrates improved accuracy, and superior performance when test conditions are unseen in the training set, or a minimal training set is used.

Formato

application/pdf

Identificador

http://eprints.qut.edu.au/28425/

Relação

http://eprints.qut.edu.au/28425/1/c28425.pdf

http://dicta2009.vu.edu.au/

Ryan, David, Denman, Simon, Fookes, Clinton B., & Sridharan, Sridha (2009) Crowd Counting Using Multiple Local Features. In Digital Image Computing: Technqiues and Applications, 2009. DICTA '09. Proceedings, Melbourne, Victoria.

Direitos

Copyright 2009 Please consult author.

Fonte

Faculty of Built Environment and Engineering; Information Security Institute; Institute for Sustainable Resources; School of Engineering Systems

Palavras-Chave #080100 ARTIFICIAL INTELLIGENCE AND IMAGE PROCESSING #090609 Signal Processing #Crowd Counting #Crowd Density #Local Features #Foreground Segmentation #Image Processing
Tipo

Conference Paper