Semantic understanding of high spatial resolution remote sensing images using directional geospatial relationships

IF 2.7 Q1 GEOGRAPHY
Stuti Ahuja, Sonali Patil, Ujwala M. Bhangale
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引用次数: 0

Abstract

ABSTRACT Semantic understanding of high spatial resolution remote sensing (RS) images can be divided into object detection, object labelling, identification of geospatial relationships, and semantic description generation. Geographical relations represent the spatial distribution dependencies between geospatial entities such as points, lines, and polygons, and the topologies among them. Geospatial relations play a very important role in describing the relations between geographic objects. These relations can be broadly classified as topological, directional, and proximity relations. These relations describe the adjacency and association relations between geospatial objects. An approach to identify an appropriate directional geospatial relationship between geo-objects present in high spatial resolution RS images is proposed in this paper. Geospatial objects in the form of the closed boundary are taken as input and relationship triplets are generated. Two approaches have been used in the identification of directional relationships and the results of both approaches are compared. The first approach is based on the centroid of the objects and the second considers whole objects while calculating the direction. These relations are then further represented using a knowledge graph, where nodes represent objects and edges represent their relationship. Knowledge graph plays a very important role in overall scene understanding. It shows the association of all objects with each other. These relationships are then represented in the form of descriptions by using template-based sentence generation. Results show that these directional relationships are accurately identified between each pair of objects using both approaches, but relations generated by considering whole objects are closer to human cognition. Semantic understanding of remote sensing images is of great significance in different applications such as urban surveys, urban planning, and management, military intelligence, etc.
基于方向性地理空间关系的高空间分辨率遥感图像语义理解
高空间分辨率遥感图像的语义理解可分为目标检测、目标标记、地理空间关系识别和语义描述生成。地理关系表示点、线、多边形等地理空间实体之间的空间分布依赖关系,以及它们之间的拓扑关系。地理空间关系在描述地理对象之间的关系中起着非常重要的作用。这些关系可以大致分为拓扑关系、方向关系和邻近关系。这些关系描述了地理空间对象之间的邻接关系和关联关系。本文提出了一种识别高空间分辨率遥感图像中地理目标之间适当的方向性地理空间关系的方法。以封闭边界形式的地理空间对象为输入,生成关系三元组。在方向关系的识别中使用了两种方法,并对两种方法的结果进行了比较。第一种方法是基于物体的质心,第二种方法是在计算方向时考虑整个物体。然后使用知识图进一步表示这些关系,其中节点表示对象,边表示它们的关系。知识图在整体场景理解中起着非常重要的作用。它显示了所有对象之间的关联。然后使用基于模板的句子生成以描述的形式表示这些关系。结果表明,两种方法都能准确地识别出每对物体之间的方向关系,但考虑整个物体产生的关系更接近人类的认知。遥感图像的语义理解在城市调查、城市规划与管理、军事情报等不同应用中具有重要意义。
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来源期刊
Annals of GIS
Annals of GIS Multiple-
CiteScore
8.30
自引率
2.00%
发文量
31
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