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NEURAL NETWORK-BASED RETRIEVAL OF PHYTOPLANKTON ABUNDANCE FROM REMOTELY-SENSED OCEAN RADIANCE

机译:基于神经网络的遥感遥感海洋浮游植物丰度反演

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An ocean color inversion model is presented for a wide variety of oceanic and coastal waters. The model is based on neural networks trained with realistic synthetic datasets. The model presented here retrieves chlorophyll a concentration as a proxy for phytoplankton abundance. One advantage to the model presented here is that inversion is not limited only to phytoplankton abundance, but rather the same methods could be used to retrieve absorption due to colored dissolved matter, absorption or backscatter due to non-algal particles, or particle beam attenuation. Initial application of the model on MODIS satellite data is presented here; however, the method is applicable to airborne or satellite remote sensing. Results indicate that the neural network inversion performs very well compared to the common OC4 empirical [chl a] algorithm, offering reduction of mean absolute deviation of error and root mean square error by factors of roughly 16 and 18 times, respectively.
机译:提出了适用于各种海洋和沿海水域的海洋颜色反演模型。该模型基于经过实际合成数据集训练的神经网络。这里介绍的模型检索叶绿素的浓度作为浮游植物丰度的替代指标。此处提出的模型的一个优点是,反演不仅限于浮游植物的丰度,而且可以使用相同的方法来检索由于有色溶解物质引起的吸收,由于非藻类颗粒引起的吸收或反向散射或颗粒束衰减。这里介绍了该模型在MODIS卫星数据上的初步应用;但是,该方法适用于机载或卫星遥感。结果表明,与普通OC4经验[chla]算法相比,神经网络反演性能很好,分别将误差的平均绝对偏差和均方根误差减小了大约16倍和18倍。

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