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Crowd density analysis and tracking


Article Information

Title: Crowd density analysis and tracking

Authors: P.V.V. Kishore, M. Nanda Kishore, D. Prudhvi Raj

Journal: ARPN Journal of Engineering and Applied Sciences

HEC Recognition History
Category From To
Y 2023-07-01 2024-09-30
Y 2022-07-01 2023-06-30
Y 2021-07-01 2022-06-30
X 2020-07-01 2021-06-30

Publisher: Khyber Medical College, Peshawar

Country: Pakistan

Year: 2015

Volume: 10

Issue: 20

Language: English

Categories

Abstract

Crowd Density Analysis (CDA) aims to compute concentration of crowd in surveillance videos. The central theme of this paper is to estimate the crowd density using crowd feature tracking with optical flow. Features for Accelerated Segment Test (FAST) algorithm extracts local features for each of the surveillance video frame. Optical flow tracks the extracted local features between frames. This process identifies the crowd features in consecutive frames. Kernel density estimator computes the crowed density in each successive frame. Finally individual people are tracked using estimated flows. The drawback of this method is similar to suffered by most of the estimation methods in this class that is reliability. Hence testing with three popular optical flow models is initiated to find the best optical flow. Three methods are Horn-Schunck (HSOF), Lukas-Kanade (LKOF) and Correlation optical flow (COF). Five features extraction methods were tested along with the three optical flow methods. FAST features with horn-schunck estimates crowed density better than the remaining methods. People tracking application with this algorithm gives good tracks compared to other methods.


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