首页> 外文会议>Geoscience and Remote Sensing Symposium, 1996. IGARSS '96. 'Remote Sensing for a Sustainable Future.', International >Multisource data integration with neural networks: optimal selection of net variables for lithologic classification
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Multisource data integration with neural networks: optimal selection of net variables for lithologic classification

机译:与神经网络的多源数据集成:岩性分类的网络变量的最佳选择

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Different types of images generated from gravity, magnetic, gamma ray spectrometry and remote sensing images such as Landsat Thematic Mapper, radar and SPOT are available in Melville Peninsula, N.W.T. to delineate geological patterns as an aid to geological field mapping in Arctic regions in Canada. Feedforward neural networks were trained to formulate mapping classifiers to predict the lithologic units. Through the analysis of classification accuracy with increased number of iterations, the authors demonstrated that the optimal choice of input layers is the most sensitive factor in achieving better accuracy result. The classification accuracy may be maximized by choosing an optimal combination of input data layers. The complexity of the training task which include's the selection of the training samples, the number of training samples, are critical for a satisfactory classification. The classification accuracy is inversely proportional to the number of output classes. The overall average accuracy of classification gets better by increasing the number of iterations to a certain degree, however, at the expense of some individual classification accuracy. The variance in the individual classification accuracy were found to be significant which has led to some criterion on the selection of net variables. For lithologic mapping, the network should be structured in accordance with the importance of each individual class.
机译:新罕布什尔州梅尔维尔半岛有重力,磁,伽马射线能谱和遥感图像生成的不同类型的图像,例如Landsat Thematic Mapper,雷达和SPOT。描绘地质模式,以帮助加拿大北极地区进行地质野外测绘。训练前馈神经网络来制定映射分类器,以预测岩性单元。通过对迭代次数增加的分类精度的分析,作者证明了输入层的最佳选择是获得更好精度结果的最敏感因素。通过选择输入数据层的最佳组合可以使分类精度最大化。训练任务的复杂性,包括训练样本的选择,训练样本的数量,对于令人满意的分类至关重要。分类精度与输出类别的数量成反比。通过将迭代次数增加到一定程度,可以提高分类的总体平均准确度,但是会牺牲一些单独的分类准确度。发现个体分类准确性的差异很大,这导致了选择净变量的一些标准。对于岩性测绘,应根据每个单独类别的重要性来构造网络。

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