Remote sensing of forest change using artificial neural networks

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Boston Univ, Boston, United States [1 ]
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IEEE Trans Geosci Remote Sens | / 2卷 / 398-404期
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Manuscript received December 16; 1994; revised July 20; 1995. This work was supported by the National Science Foundahon under Grant SBR-9300633 The authors are with the Department of Geography; Boston University; Boston; MA 02215 USA. Publisher Item Identifier S 0196-2892(96)01005-4;
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