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Optimal Threshold Selection for Tomogram Segmentation by Projection Distance Minimization | IEEE Journals & Magazine | IEEE Xplore

Optimal Threshold Selection for Tomogram Segmentation by Projection Distance Minimization


Abstract:

Grey value thresholding is a segmentation technique commonly applied to tomographic image reconstructions. Many procedures have been proposed to optimally select the grey...Show More

Abstract:

Grey value thresholding is a segmentation technique commonly applied to tomographic image reconstructions. Many procedures have been proposed to optimally select the grey value thresholds based on the tomogram data only (e.g., using the image histogram). In this paper, a projection distance minimization (PDM) method is presented that uses the tomographic projection data to determine optimal thresholds. These thresholds are computed by minimizing the distance between the forward projection of the segmented image and the measured projection data. An important contribution of the current paper is the efficient implementation of the forward projection method, which makes the use of the original projection data as a segmentation criterion feasible. Simulation experiments applied to various phantom images show that our proposed method obtains superior results compared to established histogram-based projection data methods.
Published in: IEEE Transactions on Medical Imaging ( Volume: 28, Issue: 5, May 2009)
Page(s): 676 - 686
Date of Publication: 09 December 2008

ISSN Information:

PubMed ID: 19272989

References

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