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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Implementation of real-time constrained linear discriminant analysis to remote sensing image classification
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Implementation of real-time constrained linear discriminant analysis to remote sensing image classification

机译:实时约束线性判别分析在遥感图像分类中的实现

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In this paper, we investigate the practical implementation issues of the real-time constrained linear discriminant analysis (CLDA) approach for remotely sensed image classification. Specifically, two issues are to be resolved: (1) what is the best implementation scheme that yields lowest chip design complexity with comparable classification performance. and (2) how to extend CLDA algorithm for multispectral image classification. Two limitations about data dimensionality have to be relaxed. One is in real-time hyperspectral image classification. where the number of linearly independent pixels received for classification must be larger than the data dimensionality (i.e., the number of spectral bands) in order to generate a non-singular sample correlation matrix R for the classifier, and relaxing this limitation can help to resolve the aforementioned first issue. The other is in multispectral image classification. where the number of classes to be classified cannot be greater than the data dimensionality, and relaxing this limitation can help to resolve the afore mentioned second issue. The former can be solved by introducing a pseudo inverse initiate of sample correlation matrix for R-1 adaptation. and the latter is taken care, of by expanding the data dimensionality via the operation of hand multiplication. Experiments on classification performance using these modifications are conducted to demonstrate their feasibility. All these investigations lead to a detailed ASIC chip design-scheme for the real-time CLDA algorithm suitable to both hyperspectral and multispectral images. The proposed techniques. to resolving these two dimensionality limitations are instructive to the real-time implementation of several popular detection and classification approaches in remote sensing image exploitation. (C) 2004 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:在本文中,我们研究了用于遥感影像分类的实时约束线性判别分析(CLDA)方法的实际实现问题。具体来说,有两个问题需要解决:(1)什么是最佳的实现方案,该方案可以实现最低的芯片设计复杂性并具有可比的分类性能。 (2)如何扩展CLDA算法进行多光谱图像分类。关于数据维数的两个限制必须放松。一种是实时高光谱图像分类。接收用于分类的线性独立像素的数量必须大于数据维数(即光谱带的数量),以便生成用于分类器的非奇异样本相关矩阵R,并且放宽此限制有助于解决上述第一期。另一个是在多光谱图像分类中。其中要分类的类的数量不能大于数据维,并且放宽此限制可以帮助解决上述第二个问题。前者可以通过引入用于R-1自适应的样本相关矩阵的伪逆启动来解决。后者是通过手动乘法扩展数据维数来解决的。进行了使用这些修改的分类性能实验,以证明其可行性。所有这些研究为适用于高光谱和多光谱图像的实时CLDA算法提供了详细的ASIC芯片设计方案。提出的技术。解决这两个方面的局限性对遥感图像开发中几种流行的检测和分类方法的实时实现具有指导意义。 (C)2004模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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