Aivia Software

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1. Network Type

This tab define the deep learning network we would like to use.

Network Selections

Options

Description

RCAN

For denoising and super-resolution. This is also the model used by our Nature Methods papaer. https://www.nature.com/articles/s41592-021-01155-x

UNet

For virtual staining and segmentation

Network Shape

Options: 2D or 3D

Description: By default, you should choose 2D model for 2D image data and 3D model for 3D data. But you can train a 2D model using 3D data. It will process the image slice-by-slice.

RCAN Specific Parameters

Number of Filters

Default: 32

Description: Number of features (i.e. number of output channels of each convolution layer). Increase the number for model complexity, reduce for speed up the training.

Number of Residual Blocks

Default: 3

Description: Number of residual blocks in each residual group

Number of Residual Groups

Default: 3

Description: Number of residual groups

Channel Reduction Factor

Default: 8

Description: Channel reduction factor for the squeeze-and-excitation module.

UNet Specific Parameters

Depth

Number of Initial Filter

Filter Growth Factor

Normalization Type

Channel Reduction Factor

Use Attention Gate

Activation Type at the Last Layer

2. Training Parameters

This tab define how are we going to update the model weights during training

3. Apply Parameters

This tab define how are we going to update the model weights during training

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