Home
Author Guide
Editor Guide
Reviewer Guide
Special Issues
Special Issue Introduction
Special Issues List
Topics
Published Issues
2024
2023
2022
2021
2020
2019
2018
2017
2016
2015
2014
2013
2012
2010
2009
2008
2007
2006
journal menu
Aims and Scope
Editorial Board
Indexing Service
Article Processing Charge
Open Access Policy
Publication Ethics
Digital Preservation Policy
Editorial Process
Subscription
Contact Us
General Information
ISSN:
1796-2021 (Online); 2374-4367 (Print)
Abbreviated Title:
J. Commun.
Frequency:
Monthly
DOI:
10.12720/jcm
Abstracting/Indexing:
Scopus
;
DBLP
;
CrossRef
,
EBSCO
,
Google Scholar
;
CNKI,
etc.
E-mail questions
or comments to
[email protected]
Acceptance Rate:
27%
APC:
800 USD
Average Days to Accept:
88 days
3.4
2023
CiteScore
51st percentile
Powered by
Article Metrics in Dimensions
Editor-in-Chief
Prof. Maode Ma
College of Engineering, Qatar University, Doha, Qatar
I'm very happy and honored to take on the position of editor-in-chief of JCM, which is a high-quality journal with potential and I'll try my every effort to bring JCM to a next level...
[Read More]
What's New
2024-10-16
Vol. 19, No. 10 has been published online!
2024-08-20
Vol. 19, No. 8 has been published online!
2024-07-22
Vol. 19, No. 7 has been published online!
Home
>
Published Issues
>
2017
>
Volume 12, No. 11, November 2017
>
A Method for People Counting Using Low-level Features Based on SVR with PSO Optimization
Jiaojiao Yuan
1
, Hong Bao
1
, Haitao Lou
1
, and Cheng Xu
2
1. Beijing Key Laboratory of Information Service Engineering, Beijing Union University, Beijing and 100101, China
2. Institute of Network Technology, Beijing University of Posts and Telecommunication, Beijing and 100876, China
Abstract
—People counting is an important part of video surveillance. In recent years, significant progress has been made in the field using the method of feature regression. In this context, feature extraction and using a machine learning algorithm to establish the relationship of extracted feature and the number of people are two basic steps. To extract the feature of crowd, methods in the literature either using the statistics values of the foreground pixels, or using the number of corners. In this paper, in order to obtain a better description of crowd, both of the two kinds of features are obtained respectively by using the FAST algorithm and VIBE algorithm, and a processing of normalization is done to solve the problem of perspective distortion. Then, the correspondence between these features and the number of people is studied by SVR. In addition, in order to avoid the improper selection of parameters of SVR, the PSO algorithm is used to select the relevant parameters in SVR. The method has been tested on the PETS2009 datasets and the self-shooting datasets, and the experimental results show the effectiveness of the method. And, the method has been extensively compared with the algorithm by Albiol et al, which provided the highest performance at the PETS 2009 contest on people counting. The results confirm that the proposed method improves the accuracy and robustness.
Index Terms
—FAST, VIBE, PSO, SVR, People counting
Cite: Jiaojiao Yuan, Hong Bao, Haitao Lou, and Cheng Xu, "A Method for People Counting Using Low-level Features Based on SVR with PSO Optimization," Journal of Communications, vol. 12, no. 11, pp. 617-622, 2017. Doi: 10.12720/jcm.12.11.617-622.
4-C1011
PREVIOUS PAPER
Selection of Stable Paths in the MANET Network
NEXT PAPER
Android Based Real-Time Industrial Emission Monitoring System Using IoT Technology