首页> 外文会议>ACRS 2011;Asian conference on remote sensing >Developing and evaluating an inversion model for retrieving coastal water quality and benthic coral reef properties from water color
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Developing and evaluating an inversion model for retrieving coastal water quality and benthic coral reef properties from water color

机译:开发和评估一个反演模型,以从水彩中检索沿海水质和底栖珊瑚礁的性质

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Coral reefs prefer to reside in warm, clean, clear waters with high oxygen content. Any deterioration of their environment would affect the life of coral reefs. Therefore, coral reefs serve as an important indicator of the environmental condition. Kenting National Park enjoys the most abundant coral reefs around Taiwan. However, recent extreme weather events, such as Typhoon Morakot in 2009, destroyed 50% of coral reefs in this area. The technique of water color remote sensing is promising in assessing the status of coral reefs at both high spatial and high temporal resolutions. However, to retrieve the water quality and the properties of benthic coral reefs directly from the water color signal requires a robust algorithm that has been validated against comprehensive in situ data and model simulations. In this research, we improve upon a genetic algorithm/semi-analytical model by taking into account the properties of benthic coral reefs, classifying the bottom into six different types; coral reefs, sand, sea grass, and green, red, and brown algae. A spectral library of bottom reflectance is established from in situ data measured in Kenting National Park and data simulated by the HydroLight radiative transfer model. Our new model, Genetic Algorithm and Shallow water Semi-Analytical model (GA-SSA), is able to iterate for an optimized solution of water quality and the properties of the benthic coral reef from the input of bottom reflectance spectrum data. These solutions are then compared to the conditions of water quality and benthic coral reef properties, under which the bottom reflectance spectra are measured in situ or simulated by the Hydrolight algorithm. Our results demonstrate that our new model is able to achieve accuracy as high as 80%. In addition, we also used a hyperspectral imager to collect a coral ecosystem spectral database in the Kenting area.
机译:珊瑚礁更喜欢栖息在氧气含量高的温暖,清洁,清澈的水中。其环境的任何恶化都将影响珊瑚礁的生活。因此,珊瑚礁是环境状况的重要指标。垦丁国家公园拥有台湾最丰富的珊瑚礁。但是,最近的极端天气事件(例如2009年的莫拉克台风)摧毁了该地区50%的珊瑚礁。水彩遥感技术有望在高空间分辨率和高时间分辨率下评估珊瑚礁的状况。但是,要直接从水彩信号中检索水质和底栖珊瑚礁的特性,需要一种可靠的算法,该算法已针对全面的现场数据和模型仿真进行了验证。在这项研究中,我们通过考虑底栖珊瑚礁的特性,将海底生物分为六种类型,改进了遗传算法/半分析模型。珊瑚礁,沙滩,海草以及绿色,红色和棕色的藻类。根据垦丁国家公园的实地数据和HydroLight辐射传输模型模拟的数据,建立了底部反射光谱库。我们的新模型,即遗传算法和浅水半分析模型(GA-SSA),能够从底部反射光谱数据的输入中迭代出水质和底栖珊瑚礁特性的优化解决方案。然后将这些解决方案与水质和底栖珊瑚礁特性的条件进行比较,在这种条件下,底部反射光谱是就地测量的,或者是通过Hydrolight算法进行模拟的。我们的结果表明,我们的新模型能够实现高达80%的精度。此外,我们还使用高光谱成像仪收集了垦丁地区的珊瑚生态系统光谱数据库。

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