Image classification based on textural features using unsupervised neural network

Conference item


Gandhi, V. 2006. Image classification based on textural features using unsupervised neural network. 1st International Indian Geographical Congress. Hyderabad, India 05 - 07 Oct 2006
TitleImage classification based on textural features using unsupervised neural network
AuthorsGandhi, V.
Abstract

Lecture delivered on topic of image classification based on textural features using unsupervised neural network in 1st International Indian Geographical Congress conference.

Conference1st International Indian Geographical Congress
Publication process dates
Deposited20 Aug 2013
Output statusPublished
LanguageEnglish
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https://repository.mdx.ac.uk/item/84435

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