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A Parallel Positive Boolean Function Approach to Supervised Multispectral Image Classification

机译:监督多光谱图像分类的并行积极布尔函数方法

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In this paper, we present a parallel computing technique, referred to as parallel positive Boolean function (PPBF), for supervised classification of multispectral images. The approach is based on the generalized positive Boolean function (GPBF) scheme, which has been successfully applied in multispectral image classification. The GPBF classifier is developed from a stack filter. The stack filter is defined as the class of all nonlinear digital filters. Each stack filter corresponding to a GPBF possesses the weak superposition property and the ordering property. In order for the GPBF to be effective, the proposed PPBF is performed to improve the computational speed by using parallel cluster computing techniques. It creates a set of stack filters in each parallel node implemented by message passing interface (MPI). The proposed PPBF technique reduces the structure complexity of original GPBF. The effectiveness of the proposed PPBF is evaluated by fusing Systeme Pour l'Observation de la Terre (SPOT) images and digital elevation model (DEM) information for land cover classification during the post 921 Earthquake period in Taiwan. The experimental results demonstrated that PPBF not only significantly improves the computational loads of GPBF classification, but also substantially improves the precision of classification compared to conventional classification.
机译:在本文中,我们呈现了一种并行计算技术,称为并行正布尔函数(PPBF),用于监督多光谱图像的分类。该方法基于广义正布尔函数(GPBF)方案,该方案已成功应用于多光谱图像分类。 GPBF分类器是从堆栈滤波器开发的。堆栈滤波器被定义为所有非线性数字滤波器的类。对应于GPBF的每个堆栈过滤器都具有弱叠加属性和订购属性。为了使GPBF有效,通过使用并行簇计算技术来执行所提出的PPBF以提高计算速度。它在由消息传递接口(MPI)实现的每个并行节点中创建一组堆栈过滤器。所提出的PPBF技术降低了原始GPBF的结构复杂性。所提出的PPBF的有效性是通过融合Systeme Pour L'观察De La Terre(Spot)图像和数字高度模型(DEM)信息来评估地震期间台湾地震时期的陆地覆盖分类信息。实验结果表明,PPBF不仅显着提高了GPBF分类的计算负荷,而且与传统分类相比,显着提高了分类的精度。

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