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Dark formation detection using recurrent neural networks and SAR data

机译:使用递归神经网络和SAR数据进行暗层探测

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In this paper a classification scheme based on recurrent neural networks is presented. Neural networks may be viewed as a mathematical model composed of many non-linear computational elements, called neurons, operating in parallel and massively connected by links characterized by different weights. It is well known that conventional feedforward neural networks can be used to approximate any spatially finite function given a set of hidden nodes. Recurrent neural networks are fundamentally different from feedforward architectures in the sense that they not only operate on an input space but also on an internal state space - a trace of what akeady has been processed by the network. This capability is referred as internal memory of the recurrent networks. The general objectives of this paper are to describe, demonstrate and test the potential of simple recurrent artificial neural networks for dark formation detection using SAR satellite images over the sea surface. The type and the architecture of the network are subjects of research. Input to the networks is the original SAR image. The network is called to classify the image into dark formations and clean sea. Elman's and Jordan's recurrent networks have been examined. Jordan's networks have been recognized as more suitable for dark formation detection. The Jordan's specific architecture with five inputs, three hidden neurons and one output is proposed for dark formation detection as it classifies correctly more than 95.5% of the data set.
机译:本文提出了一种基于递归神经网络的分类方案。神经网络可以看作是由许多非线性计算元素(称为神经元)组成的数学模型,它们并行运行并通过以不同权重为特征的链接进行大规模连接。众所周知,给定一组隐藏节点,常规前馈神经网络可用于近似任何空间有限函数。递归神经网络从根本上不同于前馈体系结构,因为它们不仅在输入空间上运行,而且还在内部状态空间上运行-网络已经处理了些什么。此功能称为循环网络的内部存储器。本文的总体目标是描述,演示和测试简单的循环人工神经网络在海面使用SAR卫星图像进行暗层探测的潜力。网络的类型和体系结构是研究的主题。输入到网络的是原始SAR图像。调用该网络将图像分类为暗层和干净的海洋。 Elman和Jordan的经常性网络已经过检查。约旦的网络已被认为更适合进行暗层探测。乔丹的特定结构具有五个输入,三个隐藏的神经元和一个输出,建议用于暗区形成检测,因为它可以正确分类超过95.5%的数据集。

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