Title :
A new rotation invariant similarity measure for trajectories
Author :
Fashandi, H. ; Moghaddam, A. M Eftekhari
Author_Institution :
Image Min. Res. Lab., Iran Telecommun. Res. Centre, Tehran, Iran
Abstract :
We present a new rotation invariant measure for trajectories of dynamically changing locations of mobile objects (vehicles), which appear naturally in applications such as video-tracking, motion capture etc. Similar motion patterns can also be expressed at different orientations. We have modeled each trajectory by its sequence of angles. The similarity measure is defined based on longest common subsequence (LCS) method. To evaluate a system, we have simulated the database consisting of common trajectories of moving vehicles in the cities. First, clustering based on agglomerative algorithm with new similarity measure is applied on the training dataset. To classify new samples, similarity to the median of the clusters is considered and based on the rates of the similarity to the median, some natural language sentences is produced, these sentences express the behavioural descriptions of the vehicles. Experimental results show the accuracy and efficiency of the technique.
Keywords :
invariance; natural languages; pattern clustering; position control; vehicles; LCS; agglomerative algorithm; behavioural description; database simulation; longest common subsequence; mobile objects; mobile vehicle; motion capture; motion pattern; moving vehicles; natural language sentences; rotation invariant similarity measure; sequence of angles; trajectory clustering; video-tracking; Ellipsoids; Goniometers; Hidden Markov models; Laboratories; Length measurement; Robustness; Rotation measurement; Shape; Trajectory; Vehicles; Longest Common Subsequence; Sequence of Angles; Trajectory Clustering;
Conference_Titel :
Computational Intelligence in Robotics and Automation, 2005. CIRA 2005. Proceedings. 2005 IEEE International Symposium on
Print_ISBN :
0-7803-9355-4
DOI :
10.1109/CIRA.2005.1554347