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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Urban scene understanding based on semantic and socioeconomic features: From high-resolution remote sensing imagery to multi-source geographic datasets
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Urban scene understanding based on semantic and socioeconomic features: From high-resolution remote sensing imagery to multi-source geographic datasets

机译:基于语义和社会经济特征的城市场景理解:从高分辨率遥感图像到多源地理数据集

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摘要

Scene classification is a means to interpret high-resolution remote sensing (HRS) imagery, to obtain the high-level semantic information, which can provide a reliable reference for urban planning and monitoring. The traditional scene classification methods based on HRS imagery take uniform grid cells as the scene units, thereby missing the geographic boundaries and leading to the mosaicking effect. Therefore, in this paper, the urban scene is defined as a geographic unit bordered by the road network. The task of urban scene understanding is to recognize the socioeconomic or natural semantics of the urban scene. However, due to the complexity of the urban environment, the effectiveness of the traditional scene classification methods is limited on account of three problems when applied in urban scenes: 1) The lack of socioeconomic information in HRS images, with which it is difficult to discriminate diverse urban scenes with similar exteriors. 2) The large discrepancy in the sizes and shapes of urban land parcels affects the scene feature extraction and representation. 3) Urban scene understanding frameworks that can embed various scene classification models have rarely been studied. In this paper, to solve these problems, a universal urban scene understanding framework based on multi-source geographic data (USUMG) is proposed. In the USUMG framework, road network and water channel data from Open-StreetMap (OSM) are used for generating the urban scene units. For each irregular unit, a scene decomposition method based on a morphological skeleton is employed to represent the urban scene unit by unified processing patches. To integrate the different data sources, the high-level semantic features extracted from the HRS imagery and the socioeconomic features extracted from point of interest (POI) data are fused to determine the urban scene category. Finally, the USUMG framework with various scene classification methods was tested in urban districts of Wuhan and Macao in China to verify the universality and feasibility of the proposed framework. The experimental performances are provided in this paper as a benchmark for urban scene understanding based on multi-source geographic data.
机译:场景分类是一种解释高分辨率遥感(HRS)图像的方法,以获得高级语义信息,可以为城市规划和监控提供可靠的参考。基于HRS图像的传统场景分类方法采用均匀的网格单元作为场景单元,从而缺少地理边界并导致镶嵌效果。因此,在本文中,城市场景被定义为由道路网络界定的地理单元。城市场景理解的任务是认识到城市现场的社会经济或自然语义。然而,由于城市环境的复杂性,传统场景分类方法的有效性由于在城市场景中应用了三个问题:1)在HRS图像中缺乏社会经济信息,难以区分与类似的外部的不同的城市场景。 2)城市土地包裹尺寸和形状的大差异影响了现场特征提取和表示。 3)城市现场了解可以嵌入各种场景分类模型的框架。在本文中,为了解决这些问题,提出了一种基于多源地理数据(USUMG)的通用城市场景理解框架。在USUMG框架中,来自Open-StreetMap(OSM)的道路网络和水通道数据用于生成城市场景单位。对于每个不规则单元,采用基于形态骨架的场景分解方法来通过统一处理补丁来表示城市场景单元。为了集成不同的数据源,从HRS图像中提取的高电平语义特征和从兴趣点提取的社会经济特征(POI)数据被融合以确定城市场景类别。最后,在武汉和澳门的城市地区测试了具有各种场景分类方法的USUMG框架,验证了拟议框架的普遍性和可行性。本文提供了实验性能作为基于多源地理数据的城市场景理解的基准。

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