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. 2018 Nov 30;10:219–230. doi: 10.2147/BCTT.S175311

Table 3.

Image segmentation methods

Name of segmentation method Description of method Benefits Limitations
Edge detection method Depends on discontinuity detection; generally aims to situate points with less or more rapid gray-level changes • A human-like approach
• Appropriate methods to get the best picture disproportionate area
• Not good with images where edges are unclearly defined
• Not suitable for images whose edges are not completely clear
• Not suitable for images with a large number of edges
• It has the lowest noise compared to other methods
Thresholding method Requires images with diffident sharp edges, each of which fits a single area • No need for prior knowledge about the image
• Minimum complexity of computation
• Not good for image with no clear peaks
• Not suitable for images that do not have any clear edge
• Do not consider distances, so there is no guarantee for the division of continuous areas
Region-dependent method • The same pixel in nearby areas are similar
• Counting the growing area, separating, assembling or reversing them
• Does well if region homogeneity norm is painless to define
• Extra noise resistant as compared to edge detection method
• The amount of memory and calculation time is very costly
• Region growing relies on seed region selection and sequence by which regions, pixels are inspected
• Output segments by region splitting emerge too square because of splitting format
Fuzzy method Uses operators, mathematics, properties and rules of fuzzy inference • Fuzzy membership function can be used to represent the degree of low properties or linguistic phrases • Determining the fuzzy membership function is not easy
• The calculations used in the fuzzy method can be difficult
Neural network method Uses for clustering or categorization • Does not require writing tedious programs
• Could entirely exploit the parallel nature of neural net
• Need a lot of time to train
• Initialization might affect the outcome

Note: Data adapted from Pradeep et al.16