首页> 外文会议>Intelligent Sensing and Information Processing, 2004. Proceedings of International Conference on >Classification of multispectral images using neuro-statistical classifier based on decision fusion and feature fusion
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Classification of multispectral images using neuro-statistical classifier based on decision fusion and feature fusion

机译:基于决策融合和特征融合的神经统计分类器对多光谱图像进行分类

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Artificial neural networks have gained increasing popularity as an alternative to statistical methods for classification of remote sensed images. The superiority of neural networks is that if they are trained with representative training samples they show improvement over statistical methods in terms of overall accuracies. However if the distribution functions of the information classes are known, statistical classification algorithms work very well. To retain the advantages of both the classifiers, decision fusion is used to integrate the decisions of the individual classifiers. To overcome the difficulty of classification in high dimensional feature space feature fusion is done to reduce the dimensionality. AVIRIS images are used as test site and classification is initially achieved using maximum likelihood classifier followed by a set of neural network classifiers which include perceptron, hamming and hopfield networks. The decisions of these classifiers are fused in the decision fusion center implemented using second perceptron network. The results show that the scheme is effective in terms of increased classification accuracies.
机译:人工神经网络作为统计方法的一种替代方法已经越来越受欢迎,该方法用于对遥感图像进行分类。神经网络的优势在于,如果对它们进行有代表性的训练样本的训练,则它们在总体准确度方面将优于统计方法。但是,如果已知信息类别的分布函数,则统计分类算法会很好地工作。为了保留两个分类器的优势,决策融合用于集成各个分类器的决策。为了克服高维特征空间中分类的困难,进行了特征融合以降低维数。 AVIRIS图像用作测试地点,首先使用最大似然分类器进行分类,然后再使用一组神经网络分类器进行分类,这些神经网络分类器包括感知器网络,汉明网络和Hopfield网络。这些分类器的决策在使用第二感知器网络实现的决策融合中心中融合。结果表明,该方案在增加分类精度方面是有效的。

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