Neural network-based clustering for agriculture management

被引:0
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作者
Kadim Taşdemir
Csaba Wirnhardt
机构
[1] Monitoring Agricultural Resources Unit,European Commission Joint Research Centre, Institute for Environment and Sustainability
[2] Antalya International University,Department of Computer Engineering
关键词
Self-organizing maps; Spectral clustering; CONN similarity; Land parcel identification system; Agriculture;
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摘要
Remote sensing images have been used productively for land cover identification to accurately manage and control agricultural and environmental resources. However, these images have often been interpreted interactively due to the lack of effective automated methods. We propose such a method using self-organizing maps (SOM) based spectral clustering, for agriculture management. By combining the powerful aspects of the SOM (adaptive vector quantization in a topology preserving manner) and of the spectral clustering (a manifold learning based on eigendecomposition of pairwise similarities), the proposed method achieves successful results, as shown on three study areas with images from RapidEye (a recent constellation of satellites with a specific focus on agricultural applications).
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