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On Understanding Big Data Impacts in Remotely Sensed Image Classification Using Support Vector Machine Methods

机译:用支持向量机方法理解遥感图像分类中的大数据影响

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摘要

Owing to the recent development of sensor resolutions onboard different Earth observation platforms, remote sensing is an important source of information for mapping and monitoring natural and man-made land covers. Of particular importance is the increasing amounts of available hyperspectral data originating from airborne and satellite sensors such as AVIRIS, HyMap, and Hyperion with very high spectral resolution (i.e., high number of spectral channels) containing rich information for a wide range of applications. A relevant example is the separation of different types of land-cover classes using the data in order to understand, e.g., impacts of natural disasters or changing of city buildings over time. More recently, such increases in the data volume, velocity, and variety of data contributed to the term big data that stand for challenges shared with many other scientific disciplines. On one hand, the amount of available data is increasing in a way that raises the demand for automatic data analysis elements since many of the available data collections are massively underutilized lacking experts for manual investigation. On the other hand, proven statistical methods (e.g., dimensionality reduction) driven by manual approaches have a significant impact in reducing the amount of big data toward smaller smart data contributing to the more recently used terms data value and veracity (i.e., less noise, lower dimensions that capture the most important information). This paper aims to take stock of which proven statistical data mining methods in remote sensing are used to contribute to smart data analysis processes in the light of possible automation as well as scalable and parallel processing techniques. We focus on parallel support vector machines (SVMs) as one of the best out-of-the-box classification methods.
机译:由于不同地球观测平台上传感器分辨率的最新发展,遥感是用于绘制和监视自然和人造土地覆盖的重要信息来源。尤为重要的是,来自空中传感器和卫星传感器(例如AVIRIS,HyMap和Hyperion)的可用高光谱数据越来越多,这些传感器具有很高的光谱分辨率(即大量的光谱通道),其中包含丰富的信息,适用于广泛的应用。一个相关的例子是使用数据来分离不同类型的土地覆盖类别,以了解例如自然灾害的影响或城市建筑物随时间的变化。最近,数据量,速度和数据种类的这种增加促成了“大数据”这一术语,代表着许多其他科学学科共同面临的挑战。一方面,可用数据的数量以某种方式增加,从而增加了对自动数据分析元素的需求,因为许多可用数据集合被大量利用不足,缺乏用于手动调查的专家。另一方面,由手动方法驱动的经过验证的统计方法(例如,降维)对于减少大数据量向较小的智能数据量产生重大影响,这有助于使用最近使用的术语数据值和准确性(即,噪声较小,可以捕获最重要信息的较小尺寸)。本文旨在评估在可行的自动化以及可扩展和并行处理技术的基础上,哪些经验证的遥感统计数据挖掘方法可用于智能数据分析过程。我们专注于并行支持向量机(SVM),这是最好的现成分类方法之一。

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