Adaptive invariable moments for image segmentation and action analysis for moving object

In this paper, we propose a new method for segmenting the moving objects in the difference image sequence, using the adaptive invariable moments (AIM). After detecting and segmenting the moving objects, we propose an analysis method of the moving objects’ trajectories, speeds and accelerations. The experiment results show that these methods are robust and effective.

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