Regionalized random germs by a classification for probabilistic watershed. Application: angiogenesis imaging segmentation
نویسندگان
چکیده
New methods are presented to generate random germs regionalized by a previous classification in order to use probabilistic watershed on hyperspectral images. These germs are much more efficient than the standard uniform random germs.
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