首页> 外文会议>Geoscience and Remote Sensing Symposium, 1999. IGARSS '99 Proceedings. IEEE 1999 International >Neural network approach to case 2 water analysis from Ocean Colour and Temperature Scanner
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Neural network approach to case 2 water analysis from Ocean Colour and Temperature Scanner

机译:神经网络方法从Ocean Color and Temperature Scanner进行案例2的水分析

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For the purpose of remote sensing, ocean water conditions are divided into two categories, case 1 and case 2. Case 1 waters are fully dominated by phytoplankton and their by-products. Case 2 waters additionally contain suspended sediments, dissolved organic matter, and terrigenous particles. Coastal zones are mostly classified to the case 2 category. The analysis of case 2 waters creates a difficulty due to complexity of substance mixtures, unstable atmospheric residue and noise. Water-leaving radiances used for the extraction of upper ocean constituents represent no more than 10% of the total radiance captured by satellite optical sensors. The readings are dominated by the atmosphere. An atmospheric correction may be performed to remove the contribution of the atmosphere in satellite measurements. In case 2 waters, there is a significant water leaving radiance in both the visible and near-infrared. Regular atmospheric corrections fail in case 2 waters because the extrapolation of aerosol path radiance into visible bands results in distorted or negative reflectances at visible wavelengths. Current operational ocean colour algorithms are not suited to analyse case 2 waters. Some algorithms additionally apply a turbid water test on 555 nm channel normalized water leaving radiances after the full atmospheric correction. Then, they just label isolated case 2 waters because chlorophyll estimates in case 2 zones are unreliable. The current research addresses the need for a consistent and accurate method of case 1 and case 2 water separation and a detailed analysis of case 2 water types. The task is to locate case 2 waters in Ocean Colour and Temperature Scanner (OCTS) imagery and differentiate coastal water types. There have been attempts to extract chlorophyll and gelbstoff levels based on radiative transfer models. The present study contributes with a novel artificial intelligence approach to the precise case 2 water examination.
机译:为了遥感的目的,将海水状况分为案例1和案例2两类。案例1的水域完全由浮游植物及其副产品控制。情况2的水还包含悬浮的沉积物,溶解的有机物和土质颗粒。沿海地区大部分被归类为案例2。由于物质混合物的复杂性,不稳定的大气残留物和噪声,对案例2的水域的分析带来了困难。用于提取上层海洋成分的留水辐射度不超过卫星光学传感器捕获的总辐射度的10%。读数主要受大气影响。可以执行大气校正以消除卫星测量中大气的影响。在情况2的水中,有大量水在可见光和近红外光中都留下辐射。在2种水域中,常规的大气校正失败,因为将气溶胶路径辐射率外推到可见光带中会导致可见光波长处的反射率失真或为负值。当前的操作海洋颜色算法不适合分析案例2的水域。一些算法还对555 nm通道归一化水进行了浊度水测试,在完全大气校正后会留下辐射。然后,他们只是标记隔离的案例2的水,因为案例2的区域中的叶绿素估计值不可靠。当前的研究满足了对案例1和案例2的水分离方法以及对案例2的水类型进行详细分析的一致而准确的方法的需求。任务是在“海洋颜色和温度扫描仪”(OCTS)图像中定位案例2的水域,并区分沿海水域类型。已经尝试基于辐射转移模型提取叶绿素和gelbstoff水平。本研究为精确的案例2水质检查提供了一种新颖的人工智能方法。

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