DocumentCode :
1354329
Title :
Counting People With Low-Level Features and Bayesian Regression
Author :
Chan, Antoni B. ; Vasconcelos, Nuno
Author_Institution :
Dept. of Comput. Sci., City Univ. of Hong Kong, Hong Kong, China
Volume :
21
Issue :
4
fYear :
2012
fDate :
4/1/2012 12:00:00 AM
Firstpage :
2160
Lastpage :
2177
Abstract :
An approach to the problem of estimating the size of inhomogeneous crowds, which are composed of pedestrians that travel in different directions, without using explicit object segmentation or tracking is proposed. Instead, the crowd is segmented into components of homogeneous motion, using the mixture of dynamic-texture motion model. A set of holistic low-level features is extracted from each segmented region, and a function that maps features into estimates of the number of people per segment is learned with Bayesian regression. Two Bayesian regression models are examined. The first is a combination of Gaussian process regression with a compound kernel, which accounts for both the global and local trends of the count mapping but is limited by the real-valued outputs that do not match the discrete counts. We address this limitation with a second model, which is based on a Bayesian treatment of Poisson regression that introduces a prior distribution on the linear weights of the model. Since exact inference is analytically intractable, a closed-form approximation is derived that is computationally efficient and kernelizable, enabling the representation of nonlinear functions. An approximate marginal likelihood is also derived for kernel hyperparameter learning. The two regression-based crowd counting methods are evaluated on a large pedestrian data set, containing very distinct camera views, pedestrian traffic, and outliers, such as bikes or skateboarders. Experimental results show that regression-based counts are accurate regardless of the crowd size, outperforming the count estimates produced by state-of-the-art pedestrian detectors. Results on 2 h of video demonstrate the efficiency and robustness of the regression-based crowd size estimation over long periods of time.
Keywords :
Bayes methods; Gaussian processes; feature extraction; image motion analysis; image segmentation; image texture; maximum likelihood estimation; nonlinear functions; object tracking; regression analysis; video signal processing; Bayesian regression model; Gaussian process regression; Poisson regression; approximate marginal likelihood estimation; closed-form approximation; compound kernel; count mapping; discrete counts; dynamic-texture motion model; explicit object segmentation; holistic low-level feature extraction; homogeneous motion; inhomogeneous crowd size estimation; kernel hyperparameter learning; large pedestrian data set; linear weights; nonlinear functions; object tracking; pedestrian detectors; pedestrian traffic; regression-based crowd size estimation; time 2 h; two regression-based crowd counting methods; Approximation methods; Bayesian methods; Feature extraction; Ground penetrating radar; Kernel; Motion segmentation; Training; Bayesian regression; Gaussian processes; Poisson regression; crowd analysis; surveillance; Artificial Intelligence; Bayes Theorem; Biometry; Censuses; Humans; Image Enhancement; Image Interpretation, Computer-Assisted; Pattern Recognition, Automated; Photography; Population Density; Regression Analysis; Whole Body Imaging;
fLanguage :
English
Journal_Title :
Image Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1057-7149
Type :
jour
DOI :
10.1109/TIP.2011.2172800
Filename :
6054049
Link To Document :
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