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Learning Major Pedestrian Flows in Crowded Scenes

Research output: Chapter in Book or Conference ProceedingsConference Proceedings with Oral Presentationpeer-review

Abstract

We present a crowd analysis approach computing a representation of the major pedestrian flows in complex scenes. It treats crowds as a set of moving particles and builds a spatio-temporal model of motion events. A Growing Neural Gas algorithm encodes optical flow particle trajectories as sequences of local motion events and learns a opology which is the base for trajectory distance computations. Trajectory prototypes are aligned with a two-open-ends version of Dynamic Time Warping to cope with fragmented trajectores. The trajectories are grouped into an automatically determined number of clusters with self-tuning spectral clustering. The clusters are compactly represented with the help of Principal Component Analysis, providing a technique for unusual motion detection based on residuals. We demonstrate results for a publicly available crowded video and a scene with volunteers moving according to defined origin-destination flows.
Original languageEnglish
Title of host publicationProceedings 20th International Conference on Pattern Recognition (ICPR2010)
DOIs
Publication statusPublished - 2010
EventInternational Conference on Pattern Recognition (ICPR2010) -
Duration: 23 Aug 201026 Aug 2010

Conference

ConferenceInternational Conference on Pattern Recognition (ICPR2010)
Period23/08/1026/08/10

Research Field

  • Former Research Field - Mobility Systems

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