Crowd analysis by using optical flowand density based clustering

Francesco Santoro*, Sergio Pedro, Zheng Hua Tan, Thomas B. Moeslund

*Kontaktforfatter

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24 Citationer (Scopus)

Abstract

In this paper, we present a system to detect and track crowds in an image sequence captured by a camera. In the first step, we compute optical flows by means of pyramidal Lucas- Kanade feature tracking. Afterwards, a density based clustering is used to group similar vectors. In the last step, a crowd tracker is applied to each frame, allowing us to detect and track the crowds. The output of the system is given as a graphic overlay, i.e. arrows and circles with different colors are added to the original images to visualize crowds and their movements. Evaluation results show that the system is capable of detecting certain events in the crowds, such as merging, splitting and collision.

OriginalsprogEngelsk
TidsskriftEuropean Signal Processing Conference
Sider (fra-til)269-273
Antal sider5
ISSN2219-5491
StatusUdgivet - 2010
Begivenhed18th European Signal Processing Conference, EUSIPCO 2010 - Aalborg, Danmark
Varighed: 23 aug. 201027 aug. 2010

Konference

Konference18th European Signal Processing Conference, EUSIPCO 2010
Land/OmrådeDanmark
ByAalborg
Periode23/08/201027/08/2010

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