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Processing Landsat TM data using complex-valued neural networks

机译:使用复合值神经网络处理Landsat TM数据

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摘要

Neural networks are massively parallel arrays of simple processing units that can be used for computationally complicated tasks such as image processing. This paper develops an efficient method for processing remote-sensing satellite data using complex valued artificial neurons as an approach to the problems associated with computer vision-region identification and classification-as they are applied to satellite data. Because of the amount of data to be processed and complexity of the tasks required, problems using ANNs arise, specifically, the very long training time required for large ANNs using conventional computers. These problems effectively prevent an average person from performing his own analysis. The solution presented here uses a recently developed complex valued artificial neuron model in this real-world problem. This model was then coded, run and verified on personal computers. Results show that CVN to be an accurate and computationally efficient model.
机译:神经网络是可以用于计算诸如图像处理的计算复杂任务的简单处理单元的大规模平行阵列。本文开发了一种使用复数人工神经元处理遥感卫星数据的有效方法,作为与计算机视觉区域识别和分类相关的问题的方法 - 因为它们应用于卫星数据。由于要处理的数据量和所需任务的复杂性,因此使用ANNS的问题,具体而言,使用传统计算机的大广域所需的非常长的训练时间。这些问题有效地防止了普通人进行自己的分析。这里提出的解决方案在这个现实世界的问题中使用了最近开发的复合价值人工神经元模型。然后在个人计算机上编码,运行和验证此模型。结果表明,CVN是一种准确和计算的高效模型。

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