ACM SIGGRAPH 2010 Posters 2010
DOI: 10.1145/1836845.1836903
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A work-efficient GPU algorithm for level set segmentation

Abstract: Figure 1: The progression of our algorithm while segmenting the brain matter in a 256 3 head MRI with a signal-to-noise ratio of 11. Our algorithm interactively computes this segmentation in 7 seconds -14× faster than previous GPU algorithms with no reduction in accuracy.Abstract We present a novel GPU level set segmentation algorithm that is both work-efficient and step-efficient. Our algorithm has O(log n) step-complexity, in contrast to previous GPU algorithms [Lefohn et al. 2004;Jeong et al. 2009] which ha… Show more

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Cited by 51 publications
(64 citation statements)
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“…Unfortunately, both methods have rather high memory requirements. However, Roberts et al [31] show that their method is both work and step efficient.…”
Section: B Level Set Gpu Methodsmentioning
confidence: 97%
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“…Unfortunately, both methods have rather high memory requirements. However, Roberts et al [31] show that their method is both work and step efficient.…”
Section: B Level Set Gpu Methodsmentioning
confidence: 97%
“…Both methods are more computationally involved than the pure level-set method, and thus a direct comparison with regard to efficiency is unfair. While not sparse, the recent methods of Roberts et al [31] and Klar [15] represent approaches to implement narrow-band approaches on the GPU. Unfortunately, both methods have rather high memory requirements.…”
Section: B Level Set Gpu Methodsmentioning
confidence: 99%
See 2 more Smart Citations
“…Hagan and Zhao (2009) used a Lattice Boltzmann model (LBM) approach to solve level set-based segmentation, a GPU cluster was used to handle large medical volumes. More recent examples include combining level sets and CUDA for segmentation of CT and MRI data (Roberts et al, 2010;Sharma et al, 2010).…”
Section: Image Segmentationmentioning
confidence: 99%