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Published byCleopatra Wiggins Modified over 9 years ago
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Segmentation of 3D Tubular Structures Paul Hernandez-Herrera Computational Biomedicine Lab Advisor: Ioannis A. Kakadiaris and Manos Papadakis 1
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Motivation Tubular structures appear in biomedical images – Neuron – Vessels – Coronary arteries – Airways 2
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Challenges 3 Size
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Intensity 4 Challenges
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Noise 5 Challenges
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Contrast 6 Challenges
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1.Develop a binary segmentation algorithm able to – handle different sizes – work with any acquisition modality – deal with noise in the image – handle anisotropic images – do a fast segmentation – have minimum or null user interaction 7 Thesis Objectives
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8 2.Develop a centerline algorithm able to – Correctly extract the morphology Handle overlapping structures connect gaps – Fast extraction
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9 Pipeline Input: 3D image stack Radius Step 1: Background voxels detection Step 2: Feature extraction Step 3: Background enhancement Step 4: Segmentation
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10 Segmentation as one-class classification Input: 3D image Radius Detect voxels in background Voxels with unknown label Train a model (Cost function) Feature vectors Get cost value Accepted as Background Rejected as Background These are foreground voxels
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11 Step1: Background voxel detection Compute the Laplacian of the 3D image The output has the following properties 1.Negative values in the foreground 2.Value close to zero in the boundary 3.It is positive near but outside the TS 4.Ringing (positive and negative) in the background
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12 Step 2: Feature extraction Feature vector Eigenvalues of Hessian matrix
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13 Step 3: Cost function Approximate feature vectors distribution for background voxels Normalize the distribution Smooth the normalized distribution
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14 Step 3: Background enhancement Input imageEnhanced image
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15 Step 4: Segmentation Enhanced imageSegmentation
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16 Results: Multiphoton Input Segmentation
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17 Results: Confocal Input Segmentation
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18 Results: Brain vessels Input Segmentation
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19 Ongoing work Automatic radius estimation Allow the proposed method to handle any number of features Centerline extraction
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20 Thanks Thanks for your attention QUESTIONS?
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