Transformation optimization and image blending for 3D liver ultrasound series stitching
Yuanyuan Sun (Erasmus MC)
Taygun Kekec (Erasmus MC)
Adriaan Moelker (Erasmus MC)
WJ Niessen (TU Delft - ImPhys/Computational Imaging, Erasmus MC, TU Delft - ImPhys/Medical Imaging)
Theo van Walsum (Erasmus MC)
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Abstract
We propose a consistent ultrasound volume stitching framework, with the intention to produce a volume with higher image quality and extended field-of-view in this work. Directly using pair-wise registrations for stitching may lead to geometric errors. Therefore, we propose an approach to improve the image alignment by optimizing a consistency metric over multiple pairwise registrations. In the optimization, we utilize transformed points to effectively compute a distance between rigid transformations. The method has been evaluated on synthetic, phantom and clinical data. The results indicate that our transformation optimization method is effective and our stitching framework has a good geometric precision. Also, the compound images have been demonstrated to have improved CNR values.
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