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Guidewire Tip Tracking using U-Net with Shape and Motion Constraints

Ihsan Ullah, Philip Chikontwe, Sang Hyun Park

Year
2019
Citations
5

Abstract

In recent years, research has been carried out using a micro-robot catheter instead of classic cardiac surgery performed using a catheter. To accurately control the micro-robot catheter, accurate and decisive tracking of the guidewire tip is required. In this paper, we propose a method based on the deep convolutional neural network (CNN) to track the guidewire tip. To extract a very small tip region from a large image in video sequences, we first segment small tip candidates using a segmentation CNN architecture, and then extract the best candidate using shape and motion constraints. The segmentation-based tracking strategy makes the tracking process robust and sturdy. The tracking of the guidewire tip in video sequences is performed fully-automated in real-time, i.e., 71 ms per image. For two-fold cross-validation, the proposed method achieves the average Dice score of 88.07% and IoU score of 85.07%.

Keywords

Artificial intelligenceComputer visionComputer scienceTracking (education)SegmentationConvolutional neural networkImage segmentationRobotProcess (computing)Pattern recognition (psychology)

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