Learning trajectory patterns by clustering: Experimental studies and comparative evaluation 论文
20092009 IEEE Conference on Computer Vision and Pattern Recognition引用 226
Time Series Analysis and ForecastingAnomaly Detection Techniques and ApplicationsData Management and Algorithms
摘要
Recently a large amount of research has been devoted to automatic activity analysis. Typically, activities have been defined by their motion characteristics and represented by trajectories. These trajectories are collected and clustered to determine typical behaviors. This paper evaluates different similarity measures and clustering methodologies to catalog their strengths and weaknesses when utilized for the trajectory learning problem. The clustering performance is measured by evaluating the correct clustering rate on different datasets with varying characteristics.