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      Image-guided control of a robot for medical ultrasound

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          A tutorial on visual servo control

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            A geometric snake model for segmentation of medical imagery.

            In this note, we employ the new geometric active contour models formulated in [25] and [26] for edge detection and segmentation of magnetic resonance imaging (MRI), computed tomography (CT), and ultrasound medical imagery. Our method is based on defining feature-based metrics on a given image which in turn leads to a novel snake paradigm in which the feature of interest may be considered to lie at the bottom of a potential well. Thus, the snake is attracted very quickly and efficiently to the desired feature.
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              Automatic ventricular cavity boundary detection from sequential ultrasound images using simulated annealing.

              An automatic algorithm has been developed for high-speed detection of cavity boundaries in sequential 2-D echocardiograms using an optimization algorithm called simulated annealing (SA). The algorithm has three stages. (1) A predetermined window of size nxm is decimated to size n'xm' after low-pass filtering. (2) An iterative radial gradient algorithm is employed to determine the center of gravity (CG) of the cavity. (3) 64 radii which originate from the CG defined in stage 2 are bounded by the high-probability region. Each bounded radius is defined as a link in a 1-D, 64-member cyclic Markov random field. This algorithm is unique in that it compounds spatial and temporal information along with a physical model in its decision rule, whereas most other algorithms base their decisions on spatial data alone. This is the first implementation of a relaxation algorithm for edge detection in echocardiograms. Results attained using this algorithm on real data have been highly encouraging.
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                Author and article information

                Journal
                IEEE Transactions on Robotics and Automation
                IEEE Trans. Robot. Automat.
                Institute of Electrical and Electronics Engineers (IEEE)
                1042296X
                Feb. 2002
                : 18
                : 1
                : 11-23
                Article
                10.1109/70.988970
                4e224299-0b8b-4b13-af00-a554e9d253a0
                © 2002
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