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  1. Myanmar Institute of Information Technology
  1. Myanmar Institute of Information Technology
  2. Faculty of Computer System and Technology

Automatic Image Segmentation Using Gradient based Morphological Watershed Transformation

http://hdl.handle.net/20.500.12678/0000007463
http://hdl.handle.net/20.500.12678/0000007463
ce7fb750-59c6-47cb-8b08-92acacb7696d
c7589f9b-1fbd-44a5-b03f-a71414e4a46a
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ASEAN ASEAN Community Knowledge Networks for the Economy, Society, Culture, and Environmental Stabality.pdf (661 KB)
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Publication type
Conference paper
Upload type
Publication
Title
Title Automatic Image Segmentation Using Gradient based Morphological Watershed Transformation
Language en
Publication date 2015-03-15
Authors
Khin Lay Mon
Description
Image segmentation has been an essential step in digital image processing for most subsequent image analysis and image understanding activities. Many conventional segmentation methods require a considerable amount of interactive guidance in order to attain satisfactory results. Therefore, in this paper, fully automatic image segmentation which is usually a difficult segmentation task for natural images is proposed. This system is based on mathematical morphology to control over segmentation problem of watershed segmentation. Therefore, in this system, the modified 9x9LoG filter
is applied to produce a better approximation of gradient magnitudes and then the improved watershed algorithm based on the marker is performed. This system requires simpler parameters and lower computation than other traditional watershed methods. The system can efficiently reduce over segmentation of watershed algorithm and get the meaningful segmented image that are useful for image annotation, objects detection in an image and image retrieval systems.
Keywords
Laplacian of Gaussian filter, Morphological Gradient, Watershed algorithm, Marker-controlled watershed Transformation
Conference papers
AICT
May, 2014
ASEAN Community Knowledge Networks for the Economy, Society, Culture, and Environmental Stabality
Mandalay
Techno-Scientific Progress, Climate Change and the Energy Transition for Development
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