TubeTK/Anisotropic Hybrid Diffusion with Continuous Switch: Difference between revisions

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EED focuses on edge preservation and enhancement. In EED, strong smoothing is applied along the direction of the edge while the strength of the smoothing along the other perpendicular directions depends on the gradient. The higher the gradient the lower the smoothing strength would be. Applying EED to a medical image would enhance boundaries of larger organs but would blur vessels and smaller structures.
EED focuses on edge preservation and enhancement. In EED, strong smoothing is applied along the direction of the edge while the strength of the smoothing along the other perpendicular directions depends on the gradient. The higher the gradient the lower the smoothing strength would be. Applying EED to a medical image would enhance boundaries of larger organs but would blur vessels and smaller structures.


On the other hand, CED is designed to to connect lines and improve flow-like structures. Apply CED would preserve smaller structures and filter vessels but would not filter noise and plate-like structures.
On the other hand, CED is designed to to connect lines and improve flow-like structures. Running CED on medical images would preserve smaller structures and filter vessels but would not filter noise and plate-like structures. Therefore a hybrid technique was proposed to combine intelligently the benefits of the two techniques.
 
Therefore a hybrid technique was proposed to combine intelligently the benefits of the two techniques.


= Implementation =
= Implementation =

Revision as of 20:06, 5 April 2010

This module is an implementation of diffusion based smoothing technique developed by Mendrik et al.

Mendrik AM, Vonken EJ, Rutten A, Viergever MA, van Ginneken B. Noise reduction in computed tomography scans using 3-d anisotropic hybrid diffusion with continuous switch. IEEE Trans Med Imaging. 2009 Oct;28(10):1585-94.

Algorithm synopsis

This algorithm is based on anisotropic non-linear diffusion. The technique combines edge-preserving noise reduction while enhancing local structures. This algorithm proposes hybrid approach to combine the advantages of EED ( Edge enhancing diffusion ) and CED ( Coherence enhancing diffusion ).

EED focuses on edge preservation and enhancement. In EED, strong smoothing is applied along the direction of the edge while the strength of the smoothing along the other perpendicular directions depends on the gradient. The higher the gradient the lower the smoothing strength would be. Applying EED to a medical image would enhance boundaries of larger organs but would blur vessels and smaller structures.

On the other hand, CED is designed to to connect lines and improve flow-like structures. Running CED on medical images would preserve smaller structures and filter vessels but would not filter noise and plate-like structures. Therefore a hybrid technique was proposed to combine intelligently the benefits of the two techniques.

Implementation

The tubetk implementation will follow ITK's finite difference solver framework. The implementation will be done as follows:

  1. Implement structure tensor generation filter ( Second moment matrix generator that is currently not available in ITK )
  2. Edge-enhancing diffusion filter
  3. Coherence-enhancing diffusion filter
  4. Hybrid diffusion filter