clahe contrast normalization algorithm Search Results


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MathWorks Inc clahe algorithm
Computational improvement of cancer sample recordings. ( a ) Image processing chain for cancer biopsies. The UM image stacks are contrast enhanced by contrast limited histogram equilibration <t>(CLAHE),</t> followed by stripe artifact removal using a matched 2D Fourier transform slope filter and unsharp masking. ( b1 ) Representative slice of an UM data set obtained from a breast cancer biopsy before post-processing. ( b2 ) Same as in ( b1 ) after contrast enhancement using CLAHE. The visibility of information encoded in small brightness differences is clearly enhanced. ( b3 ) Stripe artifacts generated during UM recording have been removed via a matched 2D Fourier domain slope filter. ( b4 ) Finally, the image is slightly sharpened via unsharp-masking to further enhance the visibility of fine details. ( c ) UM recordings often exhibit stripe shaped artefacts originating from light absorbing structures that are persistent to the clearing procedure. By obstructing the light sheet these structures produce visible shadows that can include an angle α with the horizontal image edges depending on the camera orientation. ( d ) To remove the stripe artefact the images are Fourier transformed and multiplied with a filter mask cutting out a pie-slice shaped piece of the spectrum matching the angular direction α of the stipes. After inverse transformation and rescaling a stripe suppressed image is obtained. ( e1 ) Design of the pie shaped filter. The angular direction α of the stripes corresponds to an angle of 90-α in the 2D power spectrum. The angular direction and the shape of the pie slice filter can be optimized in the software by varying α and the distances d 1 , d 2 , w 1 , and w 2 . This allows to match bandwidth and direction sensitivity of the filter in order to find a parameter combination providing best possible stripe suppression at minimal costs of blurring artefacts or ringing. ( e2 ) To reduce ringing artefacts due to a hard frequency cutoffs, the edges of the pie shaped filter exhibit a smooth Gaussian transition profile. All image processing steps were performed using custom-made software written <t>in</t> <t>MATLAB</t> (MathWorks, Germany) and Visual Basic.Net (Microsoft, USA). The programs can be obtained from klaus.becker@twien.ac.at upon reasonable request.
Clahe Algorithm, supplied by MathWorks Inc, used in various techniques. Bioz Stars score: 96/100, based on 1 PubMed citations. ZERO BIAS - scores, article reviews, protocol conditions and more
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Multimed Inc underwater image enhancement using blending of clahe and percentile methodologies
Computational improvement of cancer sample recordings. ( a ) Image processing chain for cancer biopsies. The UM image stacks are contrast enhanced by contrast limited histogram equilibration <t>(CLAHE),</t> followed by stripe artifact removal using a matched 2D Fourier transform slope filter and unsharp masking. ( b1 ) Representative slice of an UM data set obtained from a breast cancer biopsy before post-processing. ( b2 ) Same as in ( b1 ) after contrast enhancement using CLAHE. The visibility of information encoded in small brightness differences is clearly enhanced. ( b3 ) Stripe artifacts generated during UM recording have been removed via a matched 2D Fourier domain slope filter. ( b4 ) Finally, the image is slightly sharpened via unsharp-masking to further enhance the visibility of fine details. ( c ) UM recordings often exhibit stripe shaped artefacts originating from light absorbing structures that are persistent to the clearing procedure. By obstructing the light sheet these structures produce visible shadows that can include an angle α with the horizontal image edges depending on the camera orientation. ( d ) To remove the stripe artefact the images are Fourier transformed and multiplied with a filter mask cutting out a pie-slice shaped piece of the spectrum matching the angular direction α of the stipes. After inverse transformation and rescaling a stripe suppressed image is obtained. ( e1 ) Design of the pie shaped filter. The angular direction α of the stripes corresponds to an angle of 90-α in the 2D power spectrum. The angular direction and the shape of the pie slice filter can be optimized in the software by varying α and the distances d 1 , d 2 , w 1 , and w 2 . This allows to match bandwidth and direction sensitivity of the filter in order to find a parameter combination providing best possible stripe suppression at minimal costs of blurring artefacts or ringing. ( e2 ) To reduce ringing artefacts due to a hard frequency cutoffs, the edges of the pie shaped filter exhibit a smooth Gaussian transition profile. All image processing steps were performed using custom-made software written <t>in</t> <t>MATLAB</t> (MathWorks, Germany) and Visual Basic.Net (Microsoft, USA). The programs can be obtained from klaus.becker@twien.ac.at upon reasonable request.
Underwater Image Enhancement Using Blending Of Clahe And Percentile Methodologies, supplied by Multimed Inc, used in various techniques. Bioz Stars score: 90/100, based on 1 PubMed citations. ZERO BIAS - scores, article reviews, protocol conditions and more
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underwater image enhancement using blending of clahe and percentile methodologies - by Bioz Stars, 2026-05
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Kaggle Inc clahe fundus images
Computational improvement of cancer sample recordings. ( a ) Image processing chain for cancer biopsies. The UM image stacks are contrast enhanced by contrast limited histogram equilibration <t>(CLAHE),</t> followed by stripe artifact removal using a matched 2D Fourier transform slope filter and unsharp masking. ( b1 ) Representative slice of an UM data set obtained from a breast cancer biopsy before post-processing. ( b2 ) Same as in ( b1 ) after contrast enhancement using CLAHE. The visibility of information encoded in small brightness differences is clearly enhanced. ( b3 ) Stripe artifacts generated during UM recording have been removed via a matched 2D Fourier domain slope filter. ( b4 ) Finally, the image is slightly sharpened via unsharp-masking to further enhance the visibility of fine details. ( c ) UM recordings often exhibit stripe shaped artefacts originating from light absorbing structures that are persistent to the clearing procedure. By obstructing the light sheet these structures produce visible shadows that can include an angle α with the horizontal image edges depending on the camera orientation. ( d ) To remove the stripe artefact the images are Fourier transformed and multiplied with a filter mask cutting out a pie-slice shaped piece of the spectrum matching the angular direction α of the stipes. After inverse transformation and rescaling a stripe suppressed image is obtained. ( e1 ) Design of the pie shaped filter. The angular direction α of the stripes corresponds to an angle of 90-α in the 2D power spectrum. The angular direction and the shape of the pie slice filter can be optimized in the software by varying α and the distances d 1 , d 2 , w 1 , and w 2 . This allows to match bandwidth and direction sensitivity of the filter in order to find a parameter combination providing best possible stripe suppression at minimal costs of blurring artefacts or ringing. ( e2 ) To reduce ringing artefacts due to a hard frequency cutoffs, the edges of the pie shaped filter exhibit a smooth Gaussian transition profile. All image processing steps were performed using custom-made software written <t>in</t> <t>MATLAB</t> (MathWorks, Germany) and Visual Basic.Net (Microsoft, USA). The programs can be obtained from klaus.becker@twien.ac.at upon reasonable request.
Clahe Fundus Images, supplied by Kaggle Inc, used in various techniques. Bioz Stars score: 90/100, based on 1 PubMed citations. ZERO BIAS - scores, article reviews, protocol conditions and more
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AGFA Division Miles Inc multiscale image contrast amplification
Computational improvement of cancer sample recordings. ( a ) Image processing chain for cancer biopsies. The UM image stacks are contrast enhanced by contrast limited histogram equilibration <t>(CLAHE),</t> followed by stripe artifact removal using a matched 2D Fourier transform slope filter and unsharp masking. ( b1 ) Representative slice of an UM data set obtained from a breast cancer biopsy before post-processing. ( b2 ) Same as in ( b1 ) after contrast enhancement using CLAHE. The visibility of information encoded in small brightness differences is clearly enhanced. ( b3 ) Stripe artifacts generated during UM recording have been removed via a matched 2D Fourier domain slope filter. ( b4 ) Finally, the image is slightly sharpened via unsharp-masking to further enhance the visibility of fine details. ( c ) UM recordings often exhibit stripe shaped artefacts originating from light absorbing structures that are persistent to the clearing procedure. By obstructing the light sheet these structures produce visible shadows that can include an angle α with the horizontal image edges depending on the camera orientation. ( d ) To remove the stripe artefact the images are Fourier transformed and multiplied with a filter mask cutting out a pie-slice shaped piece of the spectrum matching the angular direction α of the stipes. After inverse transformation and rescaling a stripe suppressed image is obtained. ( e1 ) Design of the pie shaped filter. The angular direction α of the stripes corresponds to an angle of 90-α in the 2D power spectrum. The angular direction and the shape of the pie slice filter can be optimized in the software by varying α and the distances d 1 , d 2 , w 1 , and w 2 . This allows to match bandwidth and direction sensitivity of the filter in order to find a parameter combination providing best possible stripe suppression at minimal costs of blurring artefacts or ringing. ( e2 ) To reduce ringing artefacts due to a hard frequency cutoffs, the edges of the pie shaped filter exhibit a smooth Gaussian transition profile. All image processing steps were performed using custom-made software written <t>in</t> <t>MATLAB</t> (MathWorks, Germany) and Visual Basic.Net (Microsoft, USA). The programs can be obtained from klaus.becker@twien.ac.at upon reasonable request.
Multiscale Image Contrast Amplification, supplied by AGFA Division Miles Inc, used in various techniques. Bioz Stars score: 90/100, based on 1 PubMed citations. ZERO BIAS - scores, article reviews, protocol conditions and more
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MathWorks Inc contrast-limited adaptive histogram equalization clahe method
Computational improvement of cancer sample recordings. ( a ) Image processing chain for cancer biopsies. The UM image stacks are contrast enhanced by contrast limited histogram equilibration <t>(CLAHE),</t> followed by stripe artifact removal using a matched 2D Fourier transform slope filter and unsharp masking. ( b1 ) Representative slice of an UM data set obtained from a breast cancer biopsy before post-processing. ( b2 ) Same as in ( b1 ) after contrast enhancement using CLAHE. The visibility of information encoded in small brightness differences is clearly enhanced. ( b3 ) Stripe artifacts generated during UM recording have been removed via a matched 2D Fourier domain slope filter. ( b4 ) Finally, the image is slightly sharpened via unsharp-masking to further enhance the visibility of fine details. ( c ) UM recordings often exhibit stripe shaped artefacts originating from light absorbing structures that are persistent to the clearing procedure. By obstructing the light sheet these structures produce visible shadows that can include an angle α with the horizontal image edges depending on the camera orientation. ( d ) To remove the stripe artefact the images are Fourier transformed and multiplied with a filter mask cutting out a pie-slice shaped piece of the spectrum matching the angular direction α of the stipes. After inverse transformation and rescaling a stripe suppressed image is obtained. ( e1 ) Design of the pie shaped filter. The angular direction α of the stripes corresponds to an angle of 90-α in the 2D power spectrum. The angular direction and the shape of the pie slice filter can be optimized in the software by varying α and the distances d 1 , d 2 , w 1 , and w 2 . This allows to match bandwidth and direction sensitivity of the filter in order to find a parameter combination providing best possible stripe suppression at minimal costs of blurring artefacts or ringing. ( e2 ) To reduce ringing artefacts due to a hard frequency cutoffs, the edges of the pie shaped filter exhibit a smooth Gaussian transition profile. All image processing steps were performed using custom-made software written <t>in</t> <t>MATLAB</t> (MathWorks, Germany) and Visual Basic.Net (Microsoft, USA). The programs can be obtained from klaus.becker@twien.ac.at upon reasonable request.
Contrast Limited Adaptive Histogram Equalization Clahe Method, supplied by MathWorks Inc, used in various techniques. Bioz Stars score: 90/100, based on 1 PubMed citations. ZERO BIAS - scores, article reviews, protocol conditions and more
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MathWorks Inc pivlab software in
Computational improvement of cancer sample recordings. ( a ) Image processing chain for cancer biopsies. The UM image stacks are contrast enhanced by contrast limited histogram equilibration <t>(CLAHE),</t> followed by stripe artifact removal using a matched 2D Fourier transform slope filter and unsharp masking. ( b1 ) Representative slice of an UM data set obtained from a breast cancer biopsy before post-processing. ( b2 ) Same as in ( b1 ) after contrast enhancement using CLAHE. The visibility of information encoded in small brightness differences is clearly enhanced. ( b3 ) Stripe artifacts generated during UM recording have been removed via a matched 2D Fourier domain slope filter. ( b4 ) Finally, the image is slightly sharpened via unsharp-masking to further enhance the visibility of fine details. ( c ) UM recordings often exhibit stripe shaped artefacts originating from light absorbing structures that are persistent to the clearing procedure. By obstructing the light sheet these structures produce visible shadows that can include an angle α with the horizontal image edges depending on the camera orientation. ( d ) To remove the stripe artefact the images are Fourier transformed and multiplied with a filter mask cutting out a pie-slice shaped piece of the spectrum matching the angular direction α of the stipes. After inverse transformation and rescaling a stripe suppressed image is obtained. ( e1 ) Design of the pie shaped filter. The angular direction α of the stripes corresponds to an angle of 90-α in the 2D power spectrum. The angular direction and the shape of the pie slice filter can be optimized in the software by varying α and the distances d 1 , d 2 , w 1 , and w 2 . This allows to match bandwidth and direction sensitivity of the filter in order to find a parameter combination providing best possible stripe suppression at minimal costs of blurring artefacts or ringing. ( e2 ) To reduce ringing artefacts due to a hard frequency cutoffs, the edges of the pie shaped filter exhibit a smooth Gaussian transition profile. All image processing steps were performed using custom-made software written <t>in</t> <t>MATLAB</t> (MathWorks, Germany) and Visual Basic.Net (Microsoft, USA). The programs can be obtained from klaus.becker@twien.ac.at upon reasonable request.
Pivlab Software In, supplied by MathWorks Inc, used in various techniques. Bioz Stars score: 90/100, based on 1 PubMed citations. ZERO BIAS - scores, article reviews, protocol conditions and more
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Image Search Results


Computational improvement of cancer sample recordings. ( a ) Image processing chain for cancer biopsies. The UM image stacks are contrast enhanced by contrast limited histogram equilibration (CLAHE), followed by stripe artifact removal using a matched 2D Fourier transform slope filter and unsharp masking. ( b1 ) Representative slice of an UM data set obtained from a breast cancer biopsy before post-processing. ( b2 ) Same as in ( b1 ) after contrast enhancement using CLAHE. The visibility of information encoded in small brightness differences is clearly enhanced. ( b3 ) Stripe artifacts generated during UM recording have been removed via a matched 2D Fourier domain slope filter. ( b4 ) Finally, the image is slightly sharpened via unsharp-masking to further enhance the visibility of fine details. ( c ) UM recordings often exhibit stripe shaped artefacts originating from light absorbing structures that are persistent to the clearing procedure. By obstructing the light sheet these structures produce visible shadows that can include an angle α with the horizontal image edges depending on the camera orientation. ( d ) To remove the stripe artefact the images are Fourier transformed and multiplied with a filter mask cutting out a pie-slice shaped piece of the spectrum matching the angular direction α of the stipes. After inverse transformation and rescaling a stripe suppressed image is obtained. ( e1 ) Design of the pie shaped filter. The angular direction α of the stripes corresponds to an angle of 90-α in the 2D power spectrum. The angular direction and the shape of the pie slice filter can be optimized in the software by varying α and the distances d 1 , d 2 , w 1 , and w 2 . This allows to match bandwidth and direction sensitivity of the filter in order to find a parameter combination providing best possible stripe suppression at minimal costs of blurring artefacts or ringing. ( e2 ) To reduce ringing artefacts due to a hard frequency cutoffs, the edges of the pie shaped filter exhibit a smooth Gaussian transition profile. All image processing steps were performed using custom-made software written in MATLAB (MathWorks, Germany) and Visual Basic.Net (Microsoft, USA). The programs can be obtained from klaus.becker@twien.ac.at upon reasonable request.

Journal: Scientific Reports

Article Title: 3D histopathology of human tumours by fast clearing and ultramicroscopy

doi: 10.1038/s41598-020-71737-w

Figure Lengend Snippet: Computational improvement of cancer sample recordings. ( a ) Image processing chain for cancer biopsies. The UM image stacks are contrast enhanced by contrast limited histogram equilibration (CLAHE), followed by stripe artifact removal using a matched 2D Fourier transform slope filter and unsharp masking. ( b1 ) Representative slice of an UM data set obtained from a breast cancer biopsy before post-processing. ( b2 ) Same as in ( b1 ) after contrast enhancement using CLAHE. The visibility of information encoded in small brightness differences is clearly enhanced. ( b3 ) Stripe artifacts generated during UM recording have been removed via a matched 2D Fourier domain slope filter. ( b4 ) Finally, the image is slightly sharpened via unsharp-masking to further enhance the visibility of fine details. ( c ) UM recordings often exhibit stripe shaped artefacts originating from light absorbing structures that are persistent to the clearing procedure. By obstructing the light sheet these structures produce visible shadows that can include an angle α with the horizontal image edges depending on the camera orientation. ( d ) To remove the stripe artefact the images are Fourier transformed and multiplied with a filter mask cutting out a pie-slice shaped piece of the spectrum matching the angular direction α of the stipes. After inverse transformation and rescaling a stripe suppressed image is obtained. ( e1 ) Design of the pie shaped filter. The angular direction α of the stripes corresponds to an angle of 90-α in the 2D power spectrum. The angular direction and the shape of the pie slice filter can be optimized in the software by varying α and the distances d 1 , d 2 , w 1 , and w 2 . This allows to match bandwidth and direction sensitivity of the filter in order to find a parameter combination providing best possible stripe suppression at minimal costs of blurring artefacts or ringing. ( e2 ) To reduce ringing artefacts due to a hard frequency cutoffs, the edges of the pie shaped filter exhibit a smooth Gaussian transition profile. All image processing steps were performed using custom-made software written in MATLAB (MathWorks, Germany) and Visual Basic.Net (Microsoft, USA). The programs can be obtained from klaus.becker@twien.ac.at upon reasonable request.

Article Snippet: The images were contrast enhanced using the CLAHE algorithm provided by the MATLAB Image Processing Toolbox (MathWorks, Germany).

Techniques: Generated, Transformation Assay, Software