Please use this identifier to cite or link to this item: https://dspace.upt.ro/xmlui/handle/123456789/3841
Title: Neural versus statistical approaches for pattern recognition in space imagery [articol]
Authors: Neagoe, Victor
Ropot, Armand-Dragoș
Subjects: Neural pattern recognition
Multispectral space imagery
Concurrent self-organizing maps
Issue Date: 2004
Publisher: Timişoara : Editura Politehnica
Citation: Neagoe, Victor. Neural versus statistical approaches for pattern recognition in space imagery. Timişoara: Editura Politehnica, 2004
Series/Report no.: Buletinul ştiinţific al Universităţii „Politehnica” din Timişoara, România. Seria electronică şi telecomunicaţii, Tom 49(63), fasc. 1 (2004), p. 343-347
Abstract: We investigate multispectral space image classification using the new neural model called Concurrent Self-Organizing Maps (CSOM), representing a winner-takes-all collection of small modular self-organizing neural networks. For comparison, we evaluate the performances of Bayes classifier. The implemented neural/statistical classifiers are evaluted using a LANDSAT TM image with 7 bands composed by a set of 7-dimensional pixels, out of which a subset contains labeled pixels, corresponding to seven thematic categories . The best experimental result leads to the recognition rate of 95.29 %.
URI: http://primo.upt.ro:1701/primo-explore/search?query=any,contains,Neural%20versus%20statistical%20approaches%20for%20pattern%20recognition%20in%20space%20imagery&tab=default_tab&search_scope=40TUT&vid=40TUT_V1&lang=ro_RO&offset=0 Link Primo
Appears in Collections:Articole științifice/Scientific articles

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