Fuzzy time series-based trajectory estimation of a moving object

Trajectory estimation is one of the relatively new complicated topics of computer vision. Due to its nonignorable relation with defense and security systems, many studies have been made related this vital subject. In this study; using an image processing technique, one-step ahead coordinates of a moving object is estimated with an adaptive fuzzy time series forecasting model.

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