Pedestrian detection from surveillance camera
As the global cities and technology are growing quickly, the field about intelligent monitoring has gradually become one of the main topics. As a major issue in the field of intelligent monitoring, the problems of crowd counting gradually enter people's field of vision. In crowded scenes, co...
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sg-ntu-dr.10356-786682023-07-04T16:07:14Z Pedestrian detection from surveillance camera Zhou, Rui Chau Lap Pui School of Electrical and Electronic Engineering Engineering::Electrical and electronic engineering As the global cities and technology are growing quickly, the field about intelligent monitoring has gradually become one of the main topics. As a major issue in the field of intelligent monitoring, the problems of crowd counting gradually enter people's field of vision. In crowded scenes, counting issues are very important for safety and flow restrictions. In recent years, convolutional neural networks (CNN) have achieved outstanding results in the field of computer vision research. Its outstanding performance in image feature extraction and model generalization effectively solves the feature extraction problem of crowd counting under complex background. In view of the complexity of some scenes, the current neural network models for crowd counting use deeper and more complex structures to get the desired performance. In order to get more efficient methods of extracting feature maps, in this report we first analysis several typical models and their performance. Based on their drawbacks then propose a regression-based neural network including residual net and two types of attention module. The attention module is applied to both channel and spatial dimensions, which can improve the feature extraction of the network model without significantly increasing the amount of calculation and parameters. Besides, through using various-scale architecture, we can also get high-resolution density maps. Then simulation results on the dataset named ShanghaiTech and UCF_CC_50 show pretty good performance compared to a few previous works. At last, several actual problems and future research topics are presented in order to make this model more practical. Master of Science (Communications Engineering) 2019-06-25T06:39:31Z 2019-06-25T06:39:31Z 2019 Thesis http://hdl.handle.net/10356/78668 en 60 p. application/pdf |
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Engineering::Electrical and electronic engineering Zhou, Rui Pedestrian detection from surveillance camera |
description |
As the global cities and technology are growing quickly, the field about intelligent
monitoring has gradually become one of the main topics. As a major issue in the
field of intelligent monitoring, the problems of crowd counting gradually enter
people's field of vision. In crowded scenes, counting issues are very important for
safety and flow restrictions.
In recent years, convolutional neural networks (CNN) have achieved outstanding
results in the field of computer vision research. Its outstanding performance in image
feature extraction and model generalization effectively solves the feature extraction
problem of crowd counting under complex background. In view of the complexity of
some scenes, the current neural network models for crowd counting use deeper and
more complex structures to get the desired performance.
In order to get more efficient methods of extracting feature maps, in this report we
first analysis several typical models and their performance. Based on their drawbacks
then propose a regression-based neural network including residual net and two types
of attention module. The attention module is applied to both channel and spatial
dimensions, which can improve the feature extraction of the network model without
significantly increasing the amount of calculation and parameters. Besides, through
using various-scale architecture, we can also get high-resolution density maps. Then
simulation results on the dataset named ShanghaiTech and UCF_CC_50 show pretty
good performance compared to a few previous works.
At last, several actual problems and future research topics are presented in order to
make this model more practical. |
author2 |
Chau Lap Pui |
author_facet |
Chau Lap Pui Zhou, Rui |
format |
Theses and Dissertations |
author |
Zhou, Rui |
author_sort |
Zhou, Rui |
title |
Pedestrian detection from surveillance camera |
title_short |
Pedestrian detection from surveillance camera |
title_full |
Pedestrian detection from surveillance camera |
title_fullStr |
Pedestrian detection from surveillance camera |
title_full_unstemmed |
Pedestrian detection from surveillance camera |
title_sort |
pedestrian detection from surveillance camera |
publishDate |
2019 |
url |
http://hdl.handle.net/10356/78668 |
_version_ |
1772827629021298688 |