http://www.iisc.ernet.in/
A Neural Network Based Hybrid Mixture Model to Extract Information from Non-linear Mixed Pixels
http://wgbis.ces.iisc.ernet.in/energy/
Uttam Kumar 1,2,3            S. Kumar Raja 4            Chiranjit Mukhopadhyay 3            T.V. Ramachandra 1,2,*
1 Energy and Wetlands Research Group, Centre for Ecological Sciences [CES], 2 Centre for Sustainable Technologies (astra)
3 Department of Management Studies, Indian Institute of Science, Bangalore – 560012, India.
4 Institut de Recherche en Informatique et Systèmes Aléatoires, 35042 Rennes cedex-France & Technicolor Research & Innovation, Cesson Sévigné, France
*Corresponding author:
cestvr@ces.iisc.ernet.in

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Citation : Uttam Kumar, S. Kumar Raja, Chiranjit Mukhopadhyay and T.V. Ramachandra, 2012. A Neural Network Based Hybrid Mixture Model to Extract Information from Non-linear Mixed Pixels., Information 2012, 3(3), 420-441; doi:10.3390/info3030420.
* Corresponding Author :
  Dr. T.V. Ramachandra
Energy & Wetlands Research Group, Centre for Ecological Sciences, Indian Institute of Science, Bangalore – 560 012, India.
Tel : 91-80-23600985 / 22932506 / 22933099,      Fax : 91-80-23601428 / 23600085 / 23600683 [CES-TVR]
E-mail : cestvr@ces.iisc.ernet.in, energy@ces.iisc.ernet.in,     Web : http://wgbis.ces.iisc.ernet.in/energy, http://ces.iisc.ernet.in/grass
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