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1
Introduction
2
Data types
3
Why 3D UNet
4
Unit Architecture
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Python libraries
6
Annotation
7
Notebook
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Running the code
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Verify tensorflow and Keras
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Import data
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Local file location
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Number of classes
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Image dimensions
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Multiclass classification
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Learning rate
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Preprocessing
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Results
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Testing
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Saving
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Multichannel
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Basic segmentation
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Final segmentation
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OEM TIFF
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Multichannel image
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Summary
Description:
Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only! Grab it Learn to implement a 3D U-Net for semantic segmentation in this comprehensive tutorial video. Explore the application of 3D U-Net to various volumetric imaging modalities such as FIB-SEM, CT, and MRI, with a focus on the BRATS dataset. Dive into the unit architecture, Python libraries, and annotation techniques using APEER. Follow along with the provided code and dataset to train and test machine learning algorithms for multiclass semantic segmentation. Gain insights into data preprocessing, model training, result evaluation, and handling multichannel images. Master the implementation of 3D U-Net for basic and advanced segmentation tasks, including OEM TIFF and multichannel image processing.

3D U-Net for Semantic Segmentation

DigitalSreeni
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