Visual detection and crowd density modeling of pedestrians
This thesis attempts to address two problems that are related to the sensing and prediction of pedestrian distributions in urban settings. The first research topic is on the automatic collection ofpedestrian data, toaugment theinformationavailableto urbanplanners. Thesecond research topic is on a...
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sg-ntu-dr.10356-727462023-03-04T00:50:11Z Visual detection and crowd density modeling of pedestrians Tan, Sing Kuang Cham Tat Jen School of Computer Science and Engineering Future Cities Lab Centre for Multimedia and Network Technology DRNTU::Engineering::Computer science and engineering This thesis attempts to address two problems that are related to the sensing and prediction of pedestrian distributions in urban settings. The first research topic is on the automatic collection ofpedestrian data, toaugment theinformationavailableto urbanplanners. Thesecond research topic is on automatically predicting the pedestrian density distributions given planned floor layouts of malls, potentially allowing architects to interactively adapt their designs and avoid excessively congested or underutilized regions. In the first part of the thesis, we will address on the problem of detecting pedestrians in camera images. The challenges faced now are large variations of appearances and poses, differences in illumination, occlusions and cluttered background. We tackle this by introducing a novel feature that captures second order intensity variations, which can complement existing HOG (Histogram of Oriented Gradients) and LBP (Local Binary Patterns) features. This has shown improvements in detection accuracy over some frequently used datasets. Visualization of ex- ample detection responses due to different features and weights are provided to more intuitively explain the reasons behind the improved performance. In the second part of the thesis, we model and predict the approximately steady-state pedes- trian density distributions in buildings. These are affected by a large number of latent variables such as the popularity of different shops and different possible routes that shoppers may take between shops. We proposed a probabilistic model that establishes the Markovian relationship between the different latent variables and parameters. We validated the predictions against ground truth pedestrian counts, and also analyzed how the predicted popularity of shops com- pared against measured traffic at shop entrances. Doctor of Philosophy 2017-11-06T11:39:14Z 2017-11-06T11:39:14Z 2017 Thesis Tan, S. K. (2017). Visual detection and crowd density modeling of pedestrians. Doctoral thesis, Nanyang Technological University, Singapore. http://hdl.handle.net/10356/72746 10.32657/10356/72746 en 193 p. application/pdf |
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DRNTU::Engineering::Computer science and engineering Tan, Sing Kuang Visual detection and crowd density modeling of pedestrians |
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This thesis attempts to address two problems that are related to the sensing and prediction of
pedestrian distributions in urban settings. The first research topic is on the automatic collection
ofpedestrian data, toaugment theinformationavailableto urbanplanners. Thesecond research
topic is on automatically predicting the pedestrian density distributions given planned floor
layouts of malls, potentially allowing architects to interactively adapt their designs and avoid
excessively congested or underutilized regions.
In the first part of the thesis, we will address on the problem of detecting pedestrians in camera
images. The challenges faced now are large variations of appearances and poses, differences
in illumination, occlusions and cluttered background. We tackle this by introducing a novel
feature that captures second order intensity variations, which can complement existing HOG
(Histogram of Oriented Gradients) and LBP (Local Binary Patterns) features. This has shown
improvements in detection accuracy over some frequently used datasets. Visualization of ex-
ample detection responses due to different features and weights are provided to more intuitively
explain the reasons behind the improved performance.
In the second part of the thesis, we model and predict the approximately steady-state pedes-
trian density distributions in buildings. These are affected by a large number of latent variables
such as the popularity of different shops and different possible routes that shoppers may take
between shops. We proposed a probabilistic model that establishes the Markovian relationship
between the different latent variables and parameters. We validated the predictions against
ground truth pedestrian counts, and also analyzed how the predicted popularity of shops com-
pared against measured traffic at shop entrances. |
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Cham Tat Jen |
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Cham Tat Jen Tan, Sing Kuang |
format |
Theses and Dissertations |
author |
Tan, Sing Kuang |
author_sort |
Tan, Sing Kuang |
title |
Visual detection and crowd density modeling of pedestrians |
title_short |
Visual detection and crowd density modeling of pedestrians |
title_full |
Visual detection and crowd density modeling of pedestrians |
title_fullStr |
Visual detection and crowd density modeling of pedestrians |
title_full_unstemmed |
Visual detection and crowd density modeling of pedestrians |
title_sort |
visual detection and crowd density modeling of pedestrians |
publishDate |
2017 |
url |
http://hdl.handle.net/10356/72746 |
_version_ |
1759856994457485312 |