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Gaussian conditional random fields for regression in remote sensing.

机译:高斯条件随机场用于遥感回归。

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摘要

In recent years many remote sensing instruments of various properties have been employed in an attempt to better characterize important geophysical phenomena. Satellite instruments provide an exceptional opportunity for global long-term observations of the land, the biosphere, the atmosphere, and the oceans. The collected data are used for estimation and better understanding of geophysical parameters such as land cover type, atmospheric properties, or ocean temperature. Achieving accurate estimations of such parameters is an important requirement for development of models able to predict global climate changes. One of the most challenging climate research problems is estimation of global composition, load, and variability of aerosols, small airborne particles that reflect and absorb incoming solar radiation.;The existing algorithm for aerosol prediction from satellite observations is deterministic and manually tuned by domain scientist. In contrast to domain-driven method, we show that aerosol prediction is achievable by completely data-driven approaches. These statistical methods consist of learning of nonlinear regression models to predict aerosol load using the satellite observations as inputs. Measurements from unevenly distributed ground-based sites over the world are used as proxy to ground-truth outputs. Although statistical methods achieve better accuracy than deterministic method this setup is appropriate when data are independently and identically distributed (IID). The IID assumption is often violated in remote sensing where data exhibit temporal, spatial, or spatio-temporal dependencies. In such cases, the traditional supervised learning approaches could result in a model with degraded accuracy.;Conditional random fields (CRF) are widely used for predicting output variables that have some internal structure. Most of the CRF research has been done on structured classification where the outputs are discrete. We propose a CRF model for continuous outputs that uses multiple unstructured predictors to form its features and at the same time exploits structure among outputs. By constraining the feature functions to quadratic functions of outputs, we show that the CRF model can be conveniently represented in a Gaussian canonical form. The appeal of proposed Gaussian Conditional Random Fields (GCRF) model is in its conceptual simplicity and computational efficiency of learning and inference through use of sparse matrix computations. Experimental results provide strong evidence that the GCRF achieves better accuracy than non-structured models. We improve the representational power of the GCRF model by (1) introducing the adaptive feature function that can learn nonlinear relationships between inputs and outputs and (2) allowing the weights of feature functions to be dependent on inputs. The GCRF is also readily applicable to other regression applications where there is a need for knowledge integration, data fusion, and exploitation of correlation among output variables.
机译:近年来,已尝试使用许多具有各种特性的遥感仪器,以更好地表征重要的地球物理现象。卫星仪器为全球长期观测土地,生物圈,大气层和海洋提供了绝佳的机会。收集到的数据用于估算和更好地理解地球物理参数,例如土地覆盖类型,大气特性或海洋温度。实现此类参数的准确估算是开发能够预测全球气候变化的模型的重要要求。气候研究中最具挑战性的问题之一是对气溶胶,反射和吸收入射的太阳辐射的小颗粒空气的气溶胶的总体组成,负荷和变异性的估算;现有的卫星观测气溶胶预测算法是确定性的,并由领域科学家手动调整。与域驱动方法相反,我们显示了通过完全数据驱动的方法可以实现气溶胶预测。这些统计方法包括学习非线性回归模型,以卫星观测作为输入来预测气溶胶负荷。来自世界各地分布不均的地面站点的测量值被用作地面真相输出的代理。尽管统计方法比确定性方法具有更高的准确性,但当数据独立且均匀分布(IID)时,此设置还是合适的。在数据表现出时间,空间或时空依赖性的遥感中,通常会违反IID假设。在这种情况下,传统的监督学习方法可能会导致模型的准确性下降。有条件的随机字段(CRF)被广泛用于预测具有某些内部结构的输出变量。大多数CRF研究都是在结构化分类上完成的,其中输出是离散的。我们提出了一种连续输出的CRF模型,该模型使用多个非结构化预测变量来形成其特征,同时利用输出之间的结构。通过将特征函数约束为输出的二次函数,我们证明了CRF模型可以方便地以高斯规范形式表示。提出的高斯条件随机场(GCRF)模型的吸引力在于其概念简单性以及通过使用稀疏矩阵计算进行学习和推理的计算效率。实验结果提供了有力的证据,表明GCRF比非结构化模型具有更高的准确性。通过(1)引入可以学习输入和输出之间的非线性关系的自适应特征函数,以及(2)允许特征函数的权重取决于输入,我们提高了GCRF模型的表示能力。 GCRF还可以轻松应用于需要知识整合,数据融合以及利用输出变量之间的相关性的其他回归应用程序。

著录项

  • 作者

    Radosavljevic, Vladan.;

  • 作者单位

    Temple University.;

  • 授予单位 Temple University.;
  • 学科 Remote Sensing.;Computer Science.
  • 学位 Ph.D.
  • 年度 2011
  • 页码 114 p.
  • 总页数 114
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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