首页> 外文期刊>Remote Sensing >Operational Automatic Remote Sensing Image Understanding Systems: Beyond Geographic Object-Based and Object-Oriented Image Analysis (GEOBIA/GEOOIA). Part 1: Introduction
【24h】

Operational Automatic Remote Sensing Image Understanding Systems: Beyond Geographic Object-Based and Object-Oriented Image Analysis (GEOBIA/GEOOIA). Part 1: Introduction

机译:可操作的自动遥感影像理解系统:超越基于地理对象和面向对象的图像分析(GEOBIA / GEOOIA)。第1部分:简介

获取原文
       

摘要

According to existing literature and despite their commercial success, state-of-the-art two-stage non-iterative geographic object-based image analysis (GEOBIA) systems and three-stage iterative geographic object-oriented image analysis (GEOOIA) systems, where GEOOIA ⊃ GEOBIA, remain affected by a lack of productivity, general consensus and research. To outperform the degree of automation, accuracy, efficiency, robustness, scalability and timeliness of existing GEOBIA/GEOOIA systems in compliance with the Quality Assurance Framework for Earth Observation (QA4EO) guidelines, this methodological work is split into two parts. The present first paper provides a multi-disciplinary Strengths, Weaknesses, Opportunities and Threats (SWOT) analysis of the GEOBIA/GEOOIA approaches that augments similar analyses proposed in recent years. In line with constraints stemming from human vision, this SWOT analysis promotes a shift of learning paradigm in the pre-attentive vision first stage of a remote sensing (RS) image understanding system (RS-IUS), from sub-symbolic statistical model-based (inductive) image segmentation to symbolic physical model-based (deductive) image preliminary classification. Hence, a symbolic deductive pre-attentive vision first stage accomplishes image sub-symbolic segmentation and image symbolic pre-classification simultaneously. In the second part of this work a novel hybrid (combined deductive and inductive) RS-IUS architecture featuring a symbolic deductive pre-attentive vision first stage is proposed and discussed in terms of: (a) computational theory (system design); (b) information/knowledge representation; (c) algorithm design; and (d) implementation. As proof-of-concept of symbolic physical model-based pre-attentive vision first stage, the spectral knowledge-based, operational, near real-time Satellite Image Automatic Mapper™ (SIAM™) is selected from existing literature. To the best of these authors’ knowledge, this is the first time a symbolic syntactic inference system, like SIAM™, is made available to the RS community for operational use in a RS-IUS pre-attentive vision first stage, to accomplish multi-scale image segmentation and multi-granularity image pre-classification simultaneously, automatically and in near real-time.
机译:根据现有文献,尽管取得了商业上的成功,但最新的两阶段非迭代基于地理对象的图像分析(GEOBIA)系统和三阶段迭代基于地理对象的图像分析(GEOOIA)系统, GEOOIA⊃GEOBIA仍然受到生产力缺乏,普遍共识和研究的影响。为了超越现有的GEOBIA / GEOOIA系统的自动化程度,准确性,效率,鲁棒性,可扩展性和及时性,以符合《地球观测质量保证框架》(QA4EO)准则,该方法学工作分为两个部分。本第一篇论文提供了GEOBIA / GEOOIA方法的多学科优势,劣势,机会和威胁(SWOT)分析,该分析增强了近年来提出的类似分析。与人类视觉产生的限制相一致,这种SWOT分析促进了基于亚符号统计模型的遥感(RS)图像理解系统(RS-IUS)的注意力集中视觉第一阶段的学习范式的转变。 (归纳)图像分割,以基于符号物理模型的(演绎)图像初步分类。因此,符号演绎前注意视觉的第一阶段同时完成图像亚符号分割和图像符号预分类。在这项工作的第二部分中,提出并讨论了一种新颖的混合(演绎和归纳相结合)RS-IUS体系结构,该体系结构具有象征性的演绎前注意视觉的第一阶段,其依据是: (b)信息/知识表示; (c)算法设计; (d)实施。作为基于符号物理模型的预注意视觉第一阶段的概念验证,从现有文献中选择了基于光谱知识的,可操作的,近实时的卫星图像自动映射器(SIAM™)。据这些作者所知,这是第一次将符号语法推理系统(如SIAM™)提供给RS社区,以在RS-IUS注意前视觉的第一阶段进行操作使用,以实现多同时,自动和近实时地缩放图像分割和多粒度图像预分类。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号