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Sometimes microscope images lack contrast, they appear to be washed out but they still contain information. We can mathematically process these images and make them look good. More importantly, get them ready for segmentation. Histogram equalization is a good way to stretch the histogram and thus improve the image.

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DIP-Thresholding

Image Enhancements:

  • Sometimes microscope images lack contrast, they appear to be washed out but they still contain information.
  • (Show scratch assay and alloy images)
  • We can mathematically process these images and make them look good,
  • More importantly, get them ready for segmentation
  • Histogram equalization is a good way to stretch the histogram and thus improve the image.

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You can get in touch with me on my LinkedIn Profile:

Muhammad Junaid Iqbal

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Sometimes microscope images lack contrast, they appear to be washed out but they still contain information. We can mathematically process these images and make them look good. More importantly, get them ready for segmentation. Histogram equalization is a good way to stretch the histogram and thus improve the image.

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