A Massively Parallel Deep Rule-Based Ensemble Classifier for Remote Sensing Scenes

作者:Gu Xiaowei; Angelov Plamen P*; Zhang Ce; Atkinson Peter M
来源:IEEE Geoscience and Remote Sensing Letters, 2018, 15(3): 345-349.
DOI:10.1109/LGRS.2017.2787421

摘要

In this letter, we propose a new approach for remote sensing scene classification by creating an ensemble of the recently introduced massively parallel deep (fuzzy) rule-based (DRB) classifiers trained with different levels of spatial information separately. Each DRB classifier consists of a massively parallel set of human-interpretable, transparent zero-order fuzzy IF...THEN... rules with a prototype-based nature. The DRB classifier can self-organize "from scratch" and self-evolve its structure. By employing the pretrained deep convolution neural network as the feature descriptor, the proposed DRB ensemble is able to exhibit human-level performance through a transparent and parallelizable training process. Numerical examples using benchmark data set demonstrate the superior accuracy of the proposed approach together with human-interpretable fuzzy rules autonomously generated by the DRB classifier.

  • 出版日期2018-3