Title :
Robust online trajectory clustering without computing trajectory distances
Author :
Ulm, Michael ; Brandie, N.
Author_Institution :
Mobility Dept., Austrian Inst. of Technol., Vienna, Austria
Abstract :
We propose a novel trajectory clustering algorithm which is suitable for online processing of pedestrian or vehicle trajectories computed with a vision-based tracker. Our approach does not require defining distances between trajectories, and can thus process broken trajectories which are inevitable in most cases when object trackers are applied to real world video footage. Clusters are defined as smooth vector fields on a bounded connected set, and cluster distance is based on pairwise distances between vector sets. The results are illustrated on a trajectory set from the Edinburgh Informatics Forum Pedestrian Dataset, on a trajectory set from a public transport junction, and trajectories from an experimental setup in a corridor.
Keywords :
object tracking; pattern clustering; set theory; traffic engineering computing; vectors; video signal processing; Edinburgh Informatics Forum Pedestrian Dataset; bounded connected set; cluster distance; object trackers; online pedestrian trajectory processing; online vehicle trajectory processing; pairwise distances; public transport junction; real world video footage; robust online trajectory clustering; smooth vector fields; trajectory set; vector sets; vision-based tracker; Clustering algorithms; Computer vision; Image sequences; Noise measurement; Pattern recognition; Trajectory; Vectors;
Conference_Titel :
Pattern Recognition (ICPR), 2012 21st International Conference on
Print_ISBN :
978-1-4673-2216-4