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Soil moisture estimation from microwave remote sensing data withnon-linear machine learning techniques

机译:微波遥感数据与线性机床学习技术的土壤湿度估算

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Soil moisture estimation is one of the most challenging problems in the context of biophysical parameter estimation from remotely sensed data. Different approaches have been proposed in the literature, but in the last years there is a growing interest in the use of non-linear machine learning estimation techniques. This paper presents an experimental analysis in which two non-linear machine learning techniques, the well known and commonly adopted MultiLayer Perceptron neural network and the more recent Support Vector Regression, are applied to solve the problem of soil moisture retrieval from active and passive microwave data. Thank to the use of both simulated and real in situ data, it was possible to investigate the effectiveness of both techniques in different operative scenarios, including the situation of limited availability of training samples which is typical in real estimation problems. Moreover, for each scenario, different configurations of the input channels (polarization, acquisition frequency and angle) have been considered. The comparison between the two methods has been carried out in terms of different figure of merits, including error measurements and correlation coefficients between estimated and true values of the desired biophysical parameter. The results achieved indicate the Support Vector Regression as an effective alternative to the neural network approach, due to a general better estimation accuracy and a higher robustness to outliers, especially in case of limited availability of samples.
机译:土壤湿度估计是从远程感测数据的生物物理参数估计的背景下最具挑战性问题之一。在文献中提出了不同的方法,但在过去几年中,对使用非线性机器学习估计技术越来越感兴趣。本文介绍了一种实验分析,其中两个非线性机器学习技术,众所周知的和常用的多层的Multidederctron神经网络以及最近的支持向量回归,以解决有源和被动微波数据的土壤水分检索问题。谢谢使用模拟和真实的原位数据,可以调查两种技术在不同的操作场景中的有效性,包括在实际估算问题中典型的训练样本的有限情况的情况。此外,对于每个场景,已经考虑了输入通道(偏振,采集频率和角度)的不同配置。两种方法之间的比较已经在不同的优点方面进行,包括所需生物物理参数的估计和真实值之间的误差测量和相关系数。由于通用更好的估计精度和对异常值更高的鲁棒性,因此,所实现的结果将支持向量回归作为神经网络方法的有效替代方法,特别是在样品可用性有限的情况下。

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