4.6 Article

An evaluation of crowd counting methods, features and regression models

Journal

COMPUTER VISION AND IMAGE UNDERSTANDING
Volume 130, Issue -, Pages 1-17

Publisher

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.cviu.2014.07.008

Keywords

Crowd counting; Holistic features; Local features; Histogram features; Regression

Funding

  1. Australian Research Council (ARC) [LP0990135]

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Existing crowd counting algorithms rely on holistic, local or histogram based features to capture crowd properties. Regression is then employed to estimate the crowd size. Insufficient testing across multiple datasets has made it difficult to compare and contrast different methodologies. This paper presents an evaluation across multiple datasets to compare holistic, local and histogram based methods, and to compare various image features and regression models. A K-fold cross validation protocol is followed to evaluate the performance across five public datasets: UCSD, PETS 2009, Fudan, Mall and Grand Central datasets. Image features are categorised into five types: size, shape, edges, keypoints and textures. The regression models evaluated are: Gaussian process regression (GPR), linear regression, K nearest neighbours (KNN) and neural networks (NN). The results demonstrate that local features outperform equivalent holistic and histogram based features; optimal performance is observed using all image features except for textures; and that GPR outperforms linear, KNN and NN regression. (C) 2014 Elsevier Inc. All rights reserved.

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