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digital-research-methods-10b-image-processing-v02.nb
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digital-research-methods-10b-image-processing-v02.nb
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Digital Research Methods 10B:
Image Processing\
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In addition to working with page images and OCRed text, digital images such \
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their own right. Here we learn some basic image processing techniques that we \
can use to extract and visualize digital pictures of various kinds.\
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