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Decision Fusion of GA Self-Organizing Neuro-Fuzzy Multilayered Classifiers for Land Cover Classification Using Textural and Spectral Features

机译:GA自组织神经模糊多层分类器基于纹理和光谱特征的决策融合

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摘要

A novel Self-Organizing Neuro-Fuzzy Multilayered Classifier, the GA-SONeFMUC model, is proposed in this paper for land cover classification of multispectral images. The model is composed of generic fuzzy neuron classifiers (FNCs) arranged in layers, which are implemented by fuzzy rule-based systems. At each layer, parent FNCs are combined to generate a descendant FNC at the next layer with higher classification accuracy. To exploit the information acquired by the parent FNCs, their decision supports are combined using a fusion operator. As a result, a data splitting is devised within each FNC, distinguishing those pixels that are currently correctly classified to a high certainty grade from the ambiguous ones. The former are handled by the fuser, while the ambiguous pixels are further processed to enhance their classification confidence. The GA-SONeFMUC structure is determined in a self-constructing way via a structure-learning algorithm with feature selection capabilities. The parameters of the models obtained after structure learning are optimized using a real-coded genetic algorithm. For effective classification, we formulated three input sets containing spectral and textural feature types. To explore information coming from different feature sources, we apply a classifier fusion approach at the final stage. The outputs of individual classifiers constructed from each input set are combined to provide the final assignments. Our approach is tested on a lake-wetland ecosystem of international importance using an IKONOS image. A high-classification performance of 92.02% and of 75.55% for the wetland zone and the surrounding agricultural zone is achieved, respectively.
机译:提出了一种新颖的自组织神经模糊多层分类器GA-SONeFMUC模型,用于多光谱图像的土地覆盖分类。该模型由分层排列的通用模糊神经元分类器(FNC)组成,这些分类器由基于模糊规则的系统实现。在每一层,父FNC组合在一起以在下一层以更高的分类精度生成后代FNC。为了利用父FNC获取的信息,可以使用融合运算符组合其决策支持。结果,在每个FNC内设计了数据分割,以将当前正确分类为高确定性等级的像素与模糊像素区分开。前者由定影器处理,而歧义像素会进一步处理以增强其分类置信度。 GA-SONeFMUC结构是通过具有特征选择功能的结构学习算法以自构方式确定的。结构学习后获得的模型参数使用实数编码遗传算法进行优化。为了有效分类,我们制定了三个包含光谱和纹理特征类型的输入集。为了探索来自不同特征来源的信息,我们在最后阶段应用了分类器融合方法。由每个输入集构成的单个分类器的输出被组合以提供最终分配。我们使用IKONOS图像在具有国际重要性的湖湿地生态系统上进行了测试。对于湿地带和周围的农业带,分别实现了92.02%和75.55%的高分类性能。

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