Image processing
Digital image processing is the use of algorithms to make computers analyze the content of digital images.
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I'm receiving error with JPG (uppercase of jpg) image extension. This extension should be supported right?
ERROR Error resizing: Error: Expected one of: heic, heif, jpeg, jpg, png, raw, tiff, webp for format but received JPG of type string
at Object.invalidParameterError (/var/task/node_modules/sharp/lib/is.js:101:10)
at Sharp.toFormat (/var/task/node_modules/sharp/lib/output.js:168:
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There is a set of Pixel Level transforms that is used in the work Benchmarking Neural Network Robustness to Common Corruptions and Perturbations
The authors also share the code => we can absorb some transforms that they have into the library.
https://github.com/hendrycks/robustness/blob/master/ImageNet-C/create_c/make_imagenet_c.py
- ShotNoise
- Defocus
- GlassBlur
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A follow up on SixLabors/ImageSharp#1378 (comment).
Currently 32 bit test execution is only done for .NET Framework, with dotnet xunit
which is an obsolete tool today, we need to adapt dotnet test
, and add 32 bit CI targets for both net5.0
and netcoreapp3.1
. Opening an issue to remember and track this debt.
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Description
The filters.farid{,_h,_v}
functions are missing from the skimage.filters
documentation. I presume this is because they are not it __all__
? (No time to investigate right now.)
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In kornia.color.rgb_to_hsv, the computation of s is leading to nan value due to division by 0 when variable v contains 0.
s: torch.Tensor = deltac / v # saturation
I don t know what is the best solution to solve this. On my local machine, I add a small eps=1e-7 as a workaround:
s: torch.Tensor = deltac / (v + 1e-7) # saturation
System information (version)
Detailed description
The documentation for color conversions does not explain what _FULL does, e.g. https://docs.opencv.org/4.5.0/d8/d01/group__imgproc__color__conversions.html#gga4e0972be5de079fed4e3a10e24ef5ef0ae0070d7e97f1e565cc0992d038e5498e
I believe this should be explained for each color conversion as there are different inter