Title :
Joint compressive sampling and deconvolution in ultrasound medical imaging
Author :
Zhouye Chen;Adrian Basarab;Denis Kouamé
Author_Institution :
University of Toulouse, IRIT UMR CNRS 5505, France
Abstract :
The interest of compressive sampling and image deconvolution has been extensively explored in the ultrasound imaging literature. The first seeks to reduce the volume of acquired data and/or to accelerate the frame rate. The second aims at improving the ultrasound image quality in terms of spatial resolution, contrast and signal to noise ratio. In this paper, we propose a novel approach combining these two frameworks, resulting into a compressive deconvolution technique aiming at obtaining high quality reconstructions from a reduced number of measurements. The resulting inverse problem is solved by minimizing an objective function taking into account the data attachment term and two appropriate prior information terms adapted to ultrasound imaging.
Keywords :
"Image coding","Radio frequency","Deconvolution","Imaging","Image reconstruction","Ultrasonic imaging","Acoustics"
Conference_Titel :
Ultrasonics Symposium (IUS), 2015 IEEE International
DOI :
10.1109/ULTSYM.2015.0156