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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >ARTIFICIAL NEURAL NETWORK RESPONSE TO MIXED PIXELS IN COARSE-RESOLUTION SATELLITE DATA
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ARTIFICIAL NEURAL NETWORK RESPONSE TO MIXED PIXELS IN COARSE-RESOLUTION SATELLITE DATA

机译:粗分辨卫星数据中混合像素的人工神经网络响应

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A feedforward neural network model based on the multilayer perceptron structure and trained using the backpropagation algorithm responds to subpixel class composition in both simulated and real data. Maps of the network response surfaces for simulated data illustrate that the set of network outputs successfully characterizes the level of class dominance and the subpixel composition for controlled data that contain a range of class mixtures. For a Sierra Nevada test site, the correspondence between 250 m reference data and a network class map produced using 250 m degraded TM data depends on the degree of subpixel class mixing as determined from coregistered 30 m reference data. For most mislabeled pixels, classification error results from confusion between the first and second largest subpixel components, and the first and second largest network outputs. Overall map accuracy increases from 62% to 79% when mislabeled pixels are reclassified using the second largest network output. Accuracy increases to 84% if, for mislabeled pixels, the second largest subpixel class is used as a reference. Maps of the network response surfaces for a controlled subset of the Plumas data complement the findings of the simulated data and show that the network responds in a systematic way to changing proportions of subpixel components. Based on our results we suggest that interpretation of the complete set of network outputs can provide information on the relative proportions of subpixel classes. We outline a threshold-based heuristic that would allow the labeling of pure classes, mixed classes, and primary and secondary class types based on the relative magnitudes of the two largest network signals. (C) Elsevier Science Inc., 1996. [References: 29]
机译:基于多层感知器结构并使用反向传播算法训练的前馈神经网络模型可响应模拟和实际数据中的亚像素类组成。模拟数据的网络响应面图说明,网络输出集成功地表征了类别优势度和包含一系列类别混合的受控数据的子像素组成。对于内华达山脉测试站点,250 m参考数据与使用250 m降级TM数据生成的网络类别图之间的对应关系取决于从共同注册的30 m参考数据中确定的子像素类别混合程度。对于大多数贴错标签的像素,分类错误是由第一和第二最大子像素组件以及第一和第二最大网络输出之间的混淆引起的。当使用第二大网络输出来重新标记错误标签的像素时,总体地图准确性从62%提高到79%。如果对于错误标记的像素,使用第二大子像素类作为参考,则精度会提高到84%。 Plumas数据的受控子集的网络响应面图补充了模拟数据的发现,并表明网络以系统的方式对子像素分量的变化比例做出了响应。根据我们的结果,我们建议对网络输出的完整集进行解释可以提供有关子像素类相对比例的信息。我们概述了基于阈值的启发式方法,该方法将允许基于两个最大网络信号的相对大小来标记纯类别,混合类别以及主要和次要类别类型。 (C)Elsevier Science Inc.,1996年。[参考:29]

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