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. 2012;7(8):e40093.
doi: 10.1371/journal.pone.0040093. Epub 2012 Aug 2.

Integrating local and global error statistics for multi-scale RBF network training: an assessment on remote sensing data

Affiliations

Integrating local and global error statistics for multi-scale RBF network training: an assessment on remote sensing data

Giorgos Mountrakis et al. PLoS One. 2012.

Abstract

Background: This study discusses the theoretical underpinnings of a novel multi-scale radial basis function (MSRBF) neural network along with its application to classification and regression tasks in remote sensing. The novelty of the proposed MSRBF network relies on the integration of both local and global error statistics in the node selection process.

Methodology and principal findings: The method was tested on a binary classification task, detection of impervious surfaces using a Landsat satellite image, and a regression problem, simulation of waveform LiDAR data. In the classification scenario, results indicate that the MSRBF is superior to existing radial basis function and back propagation neural networks in terms of obtained classification accuracy and training-testing consistency, especially for smaller datasets. The latter is especially important as reference data acquisition is always an issue in remote sensing applications. In the regression case, MSRBF provided improved accuracy and consistency when contrasted with a multi kernel RBF network.

Conclusion and significance: Results highlight the potential of a novel training methodology that is not restricted to a specific algorithmic type, therefore significantly advancing machine learning algorithms for classification and regression tasks. The MSRBF is expected to find numerous applications within and outside the remote sensing field.

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Conflict of interest statement

Competing Interests: The authors have declared that no competing interests exist.

Figures

Figure 1
Figure 1. Activation function overlapping problem.
Figure 2
Figure 2. Conventional RBF architecture.
Figure 3
Figure 3. Blocking implementation example.
Figure 4
Figure 4. MSRBF architecture.
Figure 5
Figure 5. Schematic representation of training procedure.
Figure 6
Figure 6. Node selection balancing local and global error absorption.
Figure 7
Figure 7. Accuracy comparison among four network types.
Figure 8
Figure 8. Comparison of MAE and SDE metrics for MK and MS RBFs.
Figure 9
Figure 9. Contrasting MK and MS RBF fitting capabilities for biophysical feature extraction.
Figure 10
Figure 10. Contrasting MSRBF and MKRBF training progression.
Figure 11
Figure 11. Mean and standard deviation on training-testing accuracy deviations.

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