首页> 外文期刊>Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of >Quality Assessment of Preclassification Maps Generated From Spaceborne/Airborne Multispectral Images by the Satellite Image Automatic Mapper and Atmospheric/Topographic Correction-Spectral Classification Software Products: Part 1—Theory
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Quality Assessment of Preclassification Maps Generated From Spaceborne/Airborne Multispectral Images by the Satellite Image Automatic Mapper and Atmospheric/Topographic Correction-Spectral Classification Software Products: Part 1—Theory

机译:通过卫星图像自动映射器大气/地形校正-光谱分类软件产品从星载/机载多光谱图像生成的预分类地图的质量评估:第1部分-理论

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In compliance with the Quality Assurance Framework for Earth Observation (QA4EO) guidelines, the goal of this paper is to provide a theoretical comparison and an experimental quality assessment of two operational (ready-for-use) expert systems (prior knowledge-based nonadaptive decision trees) for automatic near real-time preattentional classification and segmentation of spaceborne/airborne multispectral (MS) images: the Satellite Image Automatic Mapper™ (SIAM™) software product and the Spectral Classification of surface reflectance signatures (SPECL) secondary product of the Atmospheric/Topographic Correction™ (ATCOR™) commercial software toolbox. For the sake of simplicity, this paper is split into two: Part 1—Theory, presented herein, and Part 2—Experimental results, already published elsewhere. The main theoretical contribution of the present Part 1 is threefold. First, it provides the published Part 2 with an interdisciplinary terminology and a theoretical background encompassing multiple disciplines, such as philosophical hermeneutics, machine learning, artificial intelligence, computer vision, human vision, and remote sensing (RS). Second, it highlights the several degrees of novelty of the ATCOR-SPECL and SIAM deductive preliminary classifiers (preclassifiers) at the four levels of abstraction of an information processing system, namely, system design, knowledge/information representation, algorithms, and implementation. Third, the present Part 1 requires the experimental Part 2 to collect a minimum set of complementary statistically independent metrological quality indicators (QIs) of operativeness (QIOs), in compliance with the QA4EO guidelines and the principles of statistics. In particular, sample QIs are required to be: 1) statistically significant, i.e., provided with a degree of uncertainty in measurement; and 2) statistically valid (consistent), i.e., representative of the entire popula- ion being sampled, which requires the implementation of a probability sampling protocol. Largely overlooked by the RS community, these sample QI requirements are almost never satisfied in the RS common practice. As a consequence, to date, QIOs of existing RS image understanding systems (RS-IUSs), including thematic map accuracy, remain largely unknown in statistical terms. The conclusion of the present Part 1 is that the proposed comparison of the two alternative ATCOR-SPECL and SIAM prior knowledge-based preclassifiers in operating mode, accomplished in the Part 2, can be considered appropriate, well-timed, and of potential interest to a large portion of the RS readership.
机译:根据地球观测的质量保证框架(QA4EO)指南,本文的目的是对两个运行(即用)专家系统(基于先验知识的非自适应决策)进行理论比较和实验质量评估树)用于星空/机载多光谱(MS)图像的近乎实时的自动预先关注分类和分段:Satellite Image Automatic Mapper™(SIAM™)软件产品和大气的表面反射率签名(SPECL)次级产品的光谱分类/ Topographic Correction™(ATCOR™)商业软件工具箱。为了简单起见,本文分为两部分:第1部分(本文介绍的理论)和第2部分(实验结果),该结果已经在其他地方发表。当前第1部分的主要理论贡献是三方面的。首先,它为已出版的第2部分提供了跨学科的术语和理论背景,涵盖了多个学科,例如哲学解释学,机器学习,人工智能,计算机视觉,人类视觉和遥感(RS)。其次,它重点介绍了在信息处理系统的四个抽象级别上,ATCOR-SPECL和SIAM演绎性初步分类器(preclassifier)在几个方面的新颖性,即系统设计,知识/信息表示,算法和实现。第三,本第1部分要求实验性第2部分按照QA4EO指南和统计原理,收集最少的一组补充统计独立的操作质量(QIO)计量质量指标(QI)。特别是,样品QI要求为:1)具有统计学意义,即在测量中具有一定程度的不确定性;和2)统计有效(一致),即代表整个抽样人群,这需要实施概率抽样协议。 RS社区广泛忽略了这些样本QI要求,这在RS常规实践中几乎是无法满足的。结果,迄今为止,现有的RS图像理解系统(RS-IUS)的QIO(包括专题图的准确性)在统计学上仍然未知。本部分第1部分的结论是,在第2部分中完成的两种替代ATCOR-SPECL和SIAM基于先验知识的预分类器在操作模式下的拟议比较可以被认为是适当的,适时的,并且可能对RS读者群的很大一部分。

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