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Editor: Jaarac
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=== Abstract ===
In this letter we study the application of the Fisher Vector (FV) to the problem of pixel-wise supervised classification of PolSAR images. This is a challenging problem since information in those images is encoded as complex-valued covariance matrices. We observe that the real part of these matrices preserve the positive semidefiniteness property of their complex counterpart. Based on this observation, we derive a FV from a
mixture of real Wishart pdfs and integrate it with a Potts-like energy model in order to capture spatial dependencies between
neighboring regions. Experimental results on two challenging datasets show the effectiveness of the approach.

=== Paper ===

Javier Redolfi, Jorge Sánchez, and Ana Georgina Flesia<<BR>>
'''"Fisher Vectors for PolSAR Image Classification"'''<<BR>>
IEEE Geoscience and Remote Sensing Letters (Accepted with Major Changes)


=== Code ===

=== Dataset ===

=== Classification Examples ===

 * As a second contribution, we have made available a set of ground truth annotations and a well defined training/testing procedure based on two popular datasets found in the literature.

 * To facilitate reproducibility, data and scripts are made available at the project website.

 * We also make classification results (qualitative) available trough the project website along with the scripts and a detailed explanation on how to generate them.

Fisher Vectors for PolSAR Image Classification

Abstract

In this letter we study the application of the Fisher Vector (FV) to the problem of pixel-wise supervised classification of PolSAR images. This is a challenging problem since information in those images is encoded as complex-valued covariance matrices. We observe that the real part of these matrices preserve the positive semidefiniteness property of their complex counterpart. Based on this observation, we derive a FV from a mixture of real Wishart pdfs and integrate it with a Potts-like energy model in order to capture spatial dependencies between neighboring regions. Experimental results on two challenging datasets show the effectiveness of the approach.

Paper

Javier Redolfi, Jorge Sánchez, and Ana Georgina Flesia
"Fisher Vectors for PolSAR Image Classification"
IEEE Geoscience and Remote Sensing Letters (Accepted with Major Changes)

Code

Dataset

Classification Examples

  • As a second contribution, we have made available a set of ground truth annotations and a well defined training/testing procedure based on two popular datasets found in the literature.
  • To facilitate reproducibility, data and scripts are made available at the project website.
  • We also make classification results (qualitative) available trough the project website along with the scripts and a detailed explanation on how to generate them.

None: JavierAndresRedolfi/sartb (última edición 2017-10-05 14:33:08 efectuada por Jaarac)