A New Method for Earth Observation Data Analytics Based on Symbolic Machine Learning
This work introduces a new classification method in the remote sensing domain, suitably
adapted to dealing with the challenges posed by the big data processing and analytics framework.
The method is based on symbolic learning techniques, and it is designed to work in complex and
information-abundant environments, where relationships among different data layers are assessed
in model-free and computationally-effective modalities. The two main stages of the method are the
data reduction-sequencing and the association analysis. The former refers to data representation; the
latter searches for systematic relationships between data instances derived from images and spatial
information encoded in supervisory signals. Subsequently, a new measure named the evidence-based
normalized differential index, inspired by the probability-based family of objective interestingness
measures, evaluates these associations. Additional information about the computational complexity
of the classification algorithm and some critical remarks are briefly introduced. An application of
land cover mapping where the input image features are morphological and radiometric descriptors
demonstrates the capacity of the method; in this instructive application, a subset of eight classes from
the Corine Land Cover is used as the reference source to guide the training phase.
PESARESI Martino;
SYRRIS Vasileios;
JULEA Andreea Maria;
2016-07-07
MDPI AG
JRC99747
2072-4292,
http://www.mdpi.com/2072-4292/8/5/399,
https://publications.jrc.ec.europa.eu/repository/handle/JRC99747,
10.3390/rs8050399,
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