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Subsurface Classification of Objects Under Turbid Waters by Means of Regularization Techniques Applied to Real Hyperspectral Data

机译:利用正则化技术将浑浊水下物体进行地下分类

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Improved benthic habitat mapping is needed to monitor coral reefs around the world and to assist coastal zones management programs. A fundamental challenge to remotely sensed mapping of coastal shallow waters is due to the significant disparity in the optical properties of the water column caused by the interaction between the coast and the sea. The objects to be classified have weak signals that interact with turbid waters that include sediments. In real scenarios, the absorption and backscattering coefficients are unknown with different sources of variability (river discharges and coastal interactions). Under normal circumstances, another unknown variable is the depth of shallow waters. This paper presents the development of algorithms for retrieving information and its application to the classification and mapping of objects under coastal shallow waters with different unknown concentrations of sediments. A mathematical model that simplifies the radiative transfer equation was used to quantify the interaction between the object of interest, the medium and the 0sensor. The retrieval of information requires the development of mathematical models and processing tools in the area of inversion, image reconstruction and classification of hyperspectral data. The algorithms developed were applied to one set of real hyperspectral imagery taken in a tank filled with water and TiO_2 that emulates turbid coastal shallow waters. Tikhonov method of regularization was used in the inversion process to estimate the bottom albedo of the water tank using a priori information in the form of stored spectral signatures, previously measured, of objects of interest.
机译:需要改进底栖生境图,以监测世界各地的珊瑚礁并协助沿海地区管理计划。沿海浅水区遥感制图的根本挑战是由于海岸和海洋之间的相互作用导致水柱光学特性的巨大差异。待分类的物体信号较弱,会与包含沉积物的混浊水相互作用。在实际情况下,吸收和反向散射系数在不同的可变性来源(河流流量和海岸相互作用)下是未知的。在正常情况下,另一个未知变量是浅水区的深度。本文介绍了信息检索算法的发展及其在不同未知沉积物浓度的沿海浅水区物体分类和制图中的应用。使用简化辐射传递方程的数学模型来量化感兴趣的对象,介质和0传感器之间的相互作用。信息的检索需要在反演,图像重建和高光谱数据分类领域开发数学模型和处理工具。将开发的算法应用于一组真实的高光谱图像,这些图像是在装满水和TiO_2的水箱中拍摄的,该水箱模拟了浑浊的沿海浅水区。在反演过程中,使用Tikhonov正则化方法,使用先验信息,以事先测量的感兴趣对象的光谱特征形式,估计水箱的底部反照率。

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