Efficient 3D Endfiring TRUS Prostate Segmentation with Globally Optimized Rotational Symmetry

CVPR 2013 Jing YuanWu QiuEranga UkwattaMartin RajchlXue-Cheng TaiAaron Fenster

Segmenting 3D endfiring transrectal ultrasound (TRUS) prostate images efficiently and accurately is of utmost importance for the planning and guiding 3D TRUS guided prostate biopsy. Poor image quality and imaging artifacts of 3D TRUS images often introduce a challenging task in computation to directly extract the 3D prostate surface... (read more)

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