IMAGE SEGMENTATION USING DIGITAL IMAGE PROCESSING METHODS
Keywords:
Image acquisition, image enhancement, image segmentation, image descriptors, contour segmentationAbstract
Image segmentation techniques using digital image processing methods allow images to be divided into segments and processed. This method allows images to be automatically analyzed and segmented into the desired segments. This article provides a brief overview of digital image processing and its components, as well as digital image segmentation methods.
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