Quantification of the angular orientation distribution of fibrous tissue structures in scientific images benefits from the Fourier image analysis to obtain quantitative information. Measurement uncertainties represent a major challenge and need to be considered by propagating them in order to determine an adaptive anisotropic Fourier filter. Our adaptive filter method (AF) is based on the maximum relative uncertainty δcut of the power spectrum as well as a weighted radial sum with weighting factor α. We use a Monte-Carlo simulation to obtain realistic greyscale images that include defined variations in fiber thickness, length, and angular dispersion as well as variations in noise. From this simulation the best agreement between predefined a...
[[abstract]]We proposed a filtered q-ball imaging (fQBI) method for the reconstruction of fiber orie...
University of Minnesota M.S. thesis. October 2012. Major: Electrical/Computer Engineering. Advisors:...
<p>The computer-generated random fiber network (a) mimicked the actual acellular collagen gel fiber ...
AbstractThis paper studies the application of the discrete Fourier transform (DFT) to predict angula...
Using high angular resolution diffusion-weighted images, spherical deconvolution enables multiple wh...
A diffusion deconvolution method is proposed to apply deconvolution to the diffusion orientation dis...
In this paper, estimation of fibre orientation is studied for fibre systems observable as a blurred ...
<p>The accuracy of orientation detection was calculated by determining the average value of the maxi...
Fiber orientation is the key information in diffusion tractography. Several deconvolution methods ha...
Quantitative analysis of fibre orientation in a random fibrous network (RFN) is important to underst...
The mechanical behavior of soft connective tissue is governed by a dense network of fibrillar protei...
By acquiring high angular resolution diffusion weighted magnetic resonance images (HARDI), Q-Ball an...
Fiber orientation is the key information in diffusion tractography. Several deconvolution methods ha...
International audienceThe Fiber Orientation Distribution (FOD) [3] is a high angular resolution diff...
The purpose of this thesis is to report the development of a quantitative second harmonic generation...
[[abstract]]We proposed a filtered q-ball imaging (fQBI) method for the reconstruction of fiber orie...
University of Minnesota M.S. thesis. October 2012. Major: Electrical/Computer Engineering. Advisors:...
<p>The computer-generated random fiber network (a) mimicked the actual acellular collagen gel fiber ...
AbstractThis paper studies the application of the discrete Fourier transform (DFT) to predict angula...
Using high angular resolution diffusion-weighted images, spherical deconvolution enables multiple wh...
A diffusion deconvolution method is proposed to apply deconvolution to the diffusion orientation dis...
In this paper, estimation of fibre orientation is studied for fibre systems observable as a blurred ...
<p>The accuracy of orientation detection was calculated by determining the average value of the maxi...
Fiber orientation is the key information in diffusion tractography. Several deconvolution methods ha...
Quantitative analysis of fibre orientation in a random fibrous network (RFN) is important to underst...
The mechanical behavior of soft connective tissue is governed by a dense network of fibrillar protei...
By acquiring high angular resolution diffusion weighted magnetic resonance images (HARDI), Q-Ball an...
Fiber orientation is the key information in diffusion tractography. Several deconvolution methods ha...
International audienceThe Fiber Orientation Distribution (FOD) [3] is a high angular resolution diff...
The purpose of this thesis is to report the development of a quantitative second harmonic generation...
[[abstract]]We proposed a filtered q-ball imaging (fQBI) method for the reconstruction of fiber orie...
University of Minnesota M.S. thesis. October 2012. Major: Electrical/Computer Engineering. Advisors:...
<p>The computer-generated random fiber network (a) mimicked the actual acellular collagen gel fiber ...