Innovative Analysis Ready Data (ARD) product and process requirements, software system design, algorithms and implementation at the midstream as necessary-but-not-sufficient precondition of the downstream in a new notion of Space Economy 4.0 - Part 2: Software developments

IF 4.2 3区 地球科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
A. Baraldi, Luca D. Sapia, D. Tiede, M. Sudmanns, H. Augustin, S. Lang
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引用次数: 2

Abstract

ABSTRACT Aiming at the convergence between Earth observation (EO) Big Data and Artificial General Intelligence (AGI), this paper consists of two parts. In the previous Part 1, existing EO optical sensory image-derived Level 2/Analysis Ready Data (ARD) products and processes are critically compared, to overcome their lack of harmonization/ standardization/ interoperability and suitability in a new notion of Space Economy 4.0. In the present Part 2, original contributions comprise, at the Marr five levels of system understanding: (1) an innovative, but realistic EO optical sensory image-derived semantics-enriched ARD co-product pair requirements specification. First, in the pursuit of third-level semantic/ontological interoperability, a novel ARD symbolic (categorical and semantic) co-product, known as Scene Classification Map (SCM), adopts an augmented Cloud versus Not-Cloud taxonomy, whose Not-Cloud class legend complies with the standard fully-nested Land Cover Classification System’s Dichotomous Phase taxonomy proposed by the United Nations Food and Agriculture Organization. Second, a novel ARD subsymbolic numerical co-product, specifically, a panchromatic or multi-spectral EO image whose dimensionless digital numbers are radiometrically calibrated into a physical unit of radiometric measure, ranging from top-of-atmosphere reflectance to surface reflectance and surface albedo values, in a five-stage radiometric correction sequence. (2) An original ARD process requirements specification. (3) An innovative ARD processing system design (architecture), where stepwi se SCM generation and stepwise SCM-conditional EO optical image radiometric correction are alternated in sequence. (4) An original modular hierarchical hybrid (combined deductive and inductive) computer vision subsystem design, provided with feedback loops, where software solutions at the Marr two shallowest levels of system understanding, specifically, algorithm and implementation, are selected from the scientific literature, to benefit from their technology readiness level as proof of feasibility, required in addition to proven suitability. To be implemented in operational mode at the space segment and/or midstream segment by both public and private EO big data providers, the proposed EO optical sensory image-derived semantics-enriched ARD product-pair and process reference standard is highlighted as linchpin for success of a new notion of Space Economy 4.0.
创新分析就绪数据(ARD)产品和工艺要求、软件系统设计、中游算法和实现,作为空间经济4.0新概念中下游的必要但不充分的先决条件-第2部分:软件开发
针对地球观测(EO)大数据与通用人工智能(AGI)的融合,本文分为两部分。在之前的第1部分中,对现有的EO光学感官图像衍生的2级/分析就绪数据(ARD)产品和流程进行了严格的比较,以克服它们在空间经济4.0的新概念中缺乏协调/标准化/互操作性和适用性。在目前的第2部分中,在Marr系统理解的五个层面上,原始贡献包括:(1)一个创新的,但现实的EO光学感官图像派生的语义丰富的ARD副产物对需求规范。首先,为了追求第三级语义/本体互操作性,一种新的ARD符号(类别和语义)副产物,即场景分类图(SCM),采用增强的云与非云分类,其非云类图例符合联合国粮食和农业组织提出的标准全嵌套土地覆盖分类系统的二分相分类。其次,一种新的ARD亚符号数值副积,具体来说,是一种全色或多光谱EO图像,其无量纲数字被辐射校准为辐射测量的物理单位,范围从大气顶部反射率到表面反射率和表面反照率值,在五阶段辐射校正序列中。(2)原始的ARD工艺要求规范。(3)一种创新的ARD处理系统设计(架构),其中逐步使用单片机生成和逐步使用单片机条件的EO光学图像辐射校正顺序交替进行。(4)原始的模块化分层混合(结合演绎和归纳)计算机视觉子系统设计,提供反馈回路,其中从科学文献中选择Marr两个最浅的系统理解层次的软件解决方案,特别是算法和实现,以受益于其技术就绪水平作为可行性证明,除了证明适用性之外,还需要证明可行性。由公共和私人EO大数据提供商在空间段和/或中游段的操作模式中实施,拟议的EO光学感官图像衍生语义丰富的ARD产品对和过程参考标准被强调为太空经济4.0新概念成功的关键。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Big Earth Data
Big Earth Data Earth and Planetary Sciences-Computers in Earth Sciences
CiteScore
7.40
自引率
10.00%
发文量
60
审稿时长
10 weeks
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