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A Neural Network Approach to Identify Hyperspectral Image Content

机译:识别高光谱图像内容的神经网络方法

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A Hyperspectral is the imaging technique that contains very large dimension data with the hundreds of channels. Meanwhile, the Hyperspectral Images (HISs) delivers the complete knowledge of imaging; therefore applying a classification algorithm is very important tool for practical uses. The HSIs are always having a large number of correlated and redundant feature, which causes the decrement in the classification accuracy; moreover, the features redundancy come up with some extra burden of computation that without adding any beneficial information to the classification accuracy. In this study, an unsupervised based Band Selection Algorithm (BSA) is considered with the Linear Projection (LP) that depends upon the metric-band similarities. Afterwards Monogenetic Binary Feature (MBF) has consider to perform the ‘texture analysis’ of the HSI, where three operational component represents the monogenetic signal such as; phase, amplitude and orientation. In post processing classification stage, feature-mapping function can provide important information, which help to adopt the Kernel based Neural Network (KNN) to optimize the generalization ability. However, an alternative method of multiclass application can be adopt through KNN, if we consider the multi-output nodes instead of taking single-output node.
机译:高光谱是一种成像技术,它包含具有数百个通道的超大尺寸数据。同时,高光谱图像(HIS)提供了完整的成像知识;因此,应用分类算法对于实际应用是非常重要的工具。 HSI始终具有大量的相关和冗余功能,这会导致分类准确性下降;此外,特征冗余带来了一些额外的计算负担,这些负担没有为分类精度增加任何有益的信息。在这项研究中,基于度量带相似度的线性投影(LP)被认为是基于无监督的频带选择算法(BSA)。之后,单基因二进制特征(MBF)考虑对HSI进行“纹理分析”,其中三个操作分量代表单基因信号,例如:相位,幅度和方向。在后期处理分类阶段,特征映射功能可以提供重要的信息,有助于采用基于核的神经网络(KNN)来优化泛化能力。但是,如果我们考虑多输出节点而不是采用单输出节点,则可以通过KNN采用多类应用程序的替代方法。

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