Leaf Morphological Feature Extraction of Digital Image Anthocephalus Cadamba

  title={Leaf Morphological Feature Extraction of Digital Image Anthocephalus Cadamba},
  author={Fuzy Yustika Manik and Yeni Herdiyeni and Elis Nina Herliyana},
  journal={TELKOMNIKA Telecommunication Computing Electronics and Control},
This research implemented an image feature extraction method using morphological techniques. The goal of this proccess is detecting objects that exist in the image. The image is converted into a grayscale image format. Then, grayscale image is processed with tresholding method to get initial segmentation. Furthermore, image from segmentation results are calculated using morphological methods to find the mapping of the original features into the new features. This process is done to get better… 

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