monai.transforms.intensity.array#
A collection of “vanilla” transforms for intensity adjustment.
Classes
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 | Changes image intensity with gamma transform. Each pixel/voxel intensity is updated as::. | 
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 | Apply clip based on the intensity distribution of input image. | 
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 | Compute horizontal and vertical maps from an instance mask It generates normalized horizontal and vertical distances to the center of mass of each region. | 
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 | Find the envelope of the input data along the requested axis using a Hilbert transform. | 
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 | Creates a binary mask that defines the foreground based on thresholds in RGB or HSV color space. | 
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 | Sharpen images using the Gaussian Blur filter. | 
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 | Apply Gaussian smooth to the input data based on specified sigma parameter. | 
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 | The transform applies Gibbs noise to 2D/3D MRI images. | 
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 | Apply the histogram normalization to input image. | 
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 | Transform for intensity remapping of images. | 
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 | Apply localized spikes in k-space at the given locations and intensities. | 
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 | Mask the intensity values of input image with the specified mask data. | 
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 | Apply median filter to the input data based on specified radius parameter. | 
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 | Normalize input based on the subtrahend and divisor: (img - subtrahend) / divisor. | 
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 | Randomly changes image intensity with gamma transform. | 
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 | Random bias field augmentation for MR images. | 
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 | Randomly coarse dropout regions in the image, then fill in the rectangular regions with specified value. | 
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 | Randomly select regions in the image, then shuffle the pixels within every region. | 
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 | Randomly select coarse regions in the image, then execute transform operations for the regions. | 
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 | Add Gaussian noise to image. | 
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 | Sharpen images using the Gaussian Blur filter based on randomly selected sigma1, sigma2 and alpha. | 
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 | Apply Gaussian smooth to the input data based on randomly selected sigma parameters. | 
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 | Naturalistic image augmentation via Gibbs artifacts. | 
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 | Apply random nonlinear transform to the image's intensity histogram. | 
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 | Transform for intensity remapping of images. | 
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 | Naturalistic data augmentation via spike artifacts. | 
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 | Add Rician noise to image. | 
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 | Randomly scale the intensity of input image by  | 
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 | Randomly scale the intensity of input image by  | 
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 | Randomly shift intensity with randomly picked offset. | 
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 | Shift intensity for the image with a factor and the standard deviation of the image by:  | 
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 | Smooth the input data along the given axis using a Savitzky-Golay filter. | 
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 | Scale the intensity of input image to the given value range (minv, maxv). | 
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 | Scale the intensity of input image by  | 
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 | Apply specific intensity scaling to the whole numpy array. | 
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 | Apply range scaling to a numpy array based on the intensity distribution of the input. | 
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 | Shift intensity uniformly for the entire image with specified offset. | 
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 | Shift intensity for the image with a factor and the standard deviation of the image by:  | 
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 | Filter the intensity values of whole image to below threshold or above threshold. | 
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 | Compute confidence map from an ultrasound image. | 
