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首页> 外文期刊>Advances in Remote Sensing >A Review on Extraction of Lakes from Remotely Sensed Optical Satellite Data with a Special Focus on Cryospheric Lakes
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A Review on Extraction of Lakes from Remotely Sensed Optical Satellite Data with a Special Focus on Cryospheric Lakes

机译:遥感光学卫星数据提取湖泊的综述,特别侧重于电杆湖泊

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Water on the Earth’s surface is an essential part of the hydrological cycle. Water resources include surface waters, groundwater, lakes, inland waters, rivers, coastal waters, and aquifers. Monitoring lake dynamics is critical to favor sustainable management of water resources on Earth. In cryosphere, lake ice cover is a robust indicator of local climate variability and change. Therefore, it is necessary to review recent methods, technologies, and satellite sensors employed for the extraction of lakes from satellite imagery. The present review focuses on the comprehensive evaluation of existing methods for extraction of lake or water body features from remotely sensed optical data. We summarize pixel-based, object-based, hybrid, spectral index based, target and spectral matching methods employed in extracting lake features in urban and cryospheric environments. To our knowledge, almost all of the published research studies on the extraction of surface lakes in cryospheric environments have essentially used satellite remote sensing data and geospatial methods. Satellite sensors of varying spatial, temporal and spectral resolutions have been used to extract and analyze the information regarding surface water. Multispectral remote sensing has been widely utilized in cryospheric studies and has employed a variety of electro-optical satellite sensor systems for characterization and extraction of various cryospheric features, such as glaciers, sea ice, lakes and rivers, the extent of snow and ice, and icebergs. It is apparent that the most common methods for extracting water bodies use single band-based threshold methods, spectral index ratio (SIR)-based multiband methods, image segmentation methods, spectral-matching methods, and target detection methods (unsupervised, supervised and hybrid). A Synergetic fusion of various remote sensing methods is also proposed to improve water information extraction accuracies. The methods developed so far are not generic rather they are specific to either the location or satellite imagery or to the type of the feature to be extracted. Lots of factors are responsible for leading to inaccurate results of lake-feature extraction in cryospheric regions, e.g. the mountain shadow which also appears as a dark pixel is often misclassified as an open lake. The methods which are working well in the cryospheric environment for feature extraction or landcover classification does not really guarantee that they will be working in the same manner for the urban environment. Thus, in coming years, it is expected that much of the work will be done on object-based approach or hybrid approach involving both pixel as well as object-based technology. A more accurate, versatile and robust method is necessary to be developed that would work independent of geographical location (for both urban and cryosphere) and type of optical sensor.
机译:地球表面的水是水文循环的重要组成部分。水资源包括地表水域,地下水,湖泊,内陆水域,河流,沿海水域和含水层。监测Lake Dynamics对于利于地球上的水资源的可持续管理至关重要。在冰冻圈,冰覆盖是当地气候变化和变化的强大指标。因此,有必要审查用于从卫星图像提取湖泊的最近的方法,技术和卫星传感器。本综述侧重于综合评估现有方法,从远程感测光学数据中提取湖泊或水体特征。我们总结了基于像素的基于对象的,混合,光谱索引,目标和光谱匹配方法,用于提取城市和乳房的环境中的湖泊特征。据我们所知,几乎所有关于触及环境中表面湖泊提取的公布研究研究都基本上使用了卫星遥感数据和地理空间方法。已经使用不同空间,时间和光谱分辨率的卫星传感器来提取和分析地表水的信息。多光谱遥感已广泛用于低温散,采用各种电光卫星传感器系统,用于表征和提取各种低温特征,如冰川,海冰,湖泊和河流,雪和冰的程度,以及冰山。显而易见的是,提取水体的最常用方法使用单带基阈值方法,频谱指数比(SIR)基于多频带方法,图像分割方法,光谱匹配方法和目标检测方法(无监督,监督和杂交)。还提出了各种遥感方法的协同融合,以提高水信息提取精度。到目前为止所开发的方法不是通用的,而是特定于位置或卫星图像或要提取的要素的类型。大量因素负责导致湖泊特征提取在低温散,例如湖泊特征提取的结果。山影子也像暗像素一样出现,通常被错误分类为一个开放的湖泊。在特征提取或土地层分类中良好工作的方法并不能真正保证他们将以与城市环境相同的方式工作。因此,在未来几年中,预计将在基于对象的方法或混合方法中完成大部分工作,涉及像素的像素以及基于对象的技术。需要开发更准确,多功能和强大的方法,以便与地理位置(城市和冰屋)和光学传感器类型无关。

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