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Library Land usage classification: a hierarchical neural network approach

Land usage classification: a hierarchical neural network approach

Land usage classification: a hierarchical neural network approach

Resource information

Date of publication
december 2014
Resource Language
ISBN / Resource ID
AGRIS:US201600195460
Pages
817-828

The classification of land usage in mountain grassland bovine areas is important for the management of forage production and grazing in grass-based livestock systems. The present paper proposes a novel, hierarchical neural network-based approach towards the classification of land usage in these areas. A survey of 72 farms was conducted in the Massif Central (France). Information was gathered on geographical characteristics and cutting and/or grazing practices on three general groups of fields: cut only, cut and grazed and grazed only fields. To classify land usage, the data were clustered and visualized in a hierarchical fashion. This was done by using a novel method for the analysis and classification of data based on growing hierarchical self-organizing maps (GHSOM). Self-organizing maps (SOM) have been shown to be successful for the analysis of highly dimensional input data in data mining applications as well as for data visualization. Moreover, the hierarchical architecture of the GHSOM is more flexible than a single SOM in the adaptation process to input data, capturing inherent hierarchical relationships among them. Experimental results show the utility of this approach.

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Authors and Publishers

Author(s), editor(s), contributor(s)

PALOMO, E. J.
D. ELIZONDO
G. BRUNSCHWIG

Data Provider
Geographical focus