Texture classification of Mediterranean land cover |
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Affiliation: | 1. Department of Radiation Medicine and Protection, Medical College, Soochow University, China;2. School of Health Sciences, Purdue University, IN, 47907, USA;3. Department of Nuclear Medicine, China–Japan Friendship Hospital, Beijing, 100037, China;4. Department of Chemistry, Faculty of Arts and Science, Celal Bayar University, 45040, Yunusemre/Manisa, Turkey;1. Environmental Research Institute, UHI-NHC, Thurso, Scotland, UK;2. International Centre for Island Technology, Heriot Watt University, Stromness, Scotland, UK;3. IFREMER, Plouzané, France |
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Abstract: | Maximum likelihood (ML) and artificial neural network (ANN) classifiers were applied to three Landsat Thematic Mapper (TM) image sub-scenes (termed urban, agricultural and semi-natural) of Cukurova, Turkey. Inputs to the classifications comprised (i) spectral data and (ii) spectral data in combination with texture measures derived on a per-pixel basis. The texture measures used were: the standard deviation and variance and statistics derived from the co-occurrence matrix and the variogram. The addition of texture measures increased classification accuracy for the urban sub-scene but decreased classification accuracy for agricultural and semi-natural sub-scenes. Classification accuracy was dependent on the nature of the spatial variation in the image sub-scene and, in particular, the relation between the frequency of spatial variation and the spatial resolution of the imagery. For Mediterranean land, texture classification applied to Landsat TM imagery may be appropriate for the classification of urban areas only. |
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Keywords: | Classification Landsat TM Texture Artificial neural networks |
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