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Feature Drift Resilient Tracking Of The Carotid Artery Wall Using Unscented Kalman Filtering With Data Fusion

Jan Dorazil, Rene Repp, Thomas Kropfreiter, Richard Prüller, Kamil ?íha, Franz Hlawatsch

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    Length: 13:10
04 May 2020

An analysis of the motion of the common carotid artery (CCA) provides effective indicators for cardiovascular diseases. Here, we propose a method for tracking CCA wall motion from a B-mode ultrasound video sequence. An unscented Kalman filter based on a suitably devised state-space model fuses measurements produced by an optical flow algorithm and a CCA wall localization algorithm. This approach compensates for feature drift, which is a detrimental effect in optical flow algorithms. The proposed method is demonstrated to outperform a state-of-the-art tracking method based on optical flow.

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