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首页> 外文期刊>Advances in environmental research: An international journal of research in environmental science, engineering and technology >The automated extraction of environmentally relevant features from digital imagery using Bayesianmulti-resolution analysis
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The automated extraction of environmentally relevant features from digital imagery using Bayesianmulti-resolution analysis

机译:使用贝叶斯多分辨率分析从数字图像中自动提取与环境相关的特征

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In this paper, we discuss the use of hierarchical tree-structured Bayesian networks for integrating knowledge concerning contextual relationships between environmentally relevant features extracted from digital imagery at multiple resolution scales. In our model, conditional probability distributions over continuous valued observations are parameterized using a mixture of multivariate Gaussian distributions. Separate classifiers for pixels and groups of pixels are used as sub-components of the overall model. The Bayesian formalism allows models to be composed in a systematic and statistically sound manner. We illustrate how this approach can be used to resolve ambiguity leading to classification errors and thus improve techniques for the classification of land use from aerial imagery. We present an example relevant to ecosystem analysis, the monitoring of urban growth and the automatic generation of input parameters for hydrologic models.
机译:在本文中,我们讨论了使用分层树形结构贝叶斯网络来集成有关在多分辨率尺度下从数字图像中提取的环境相关特征之间的上下文关系的知识。在我们的模型中,使用多元高斯分布的混合参数化了连续值观测值上的条件概率分布。像素和像素组的单独分类器用作整体模型的子组件。贝叶斯形式主义允许模型以系统和统计合理的方式进行组合。我们将说明如何使用这种方法来解决导致分类错误的歧义,从而改善航空影像对土地利用进行分类的技术。我们提供了一个与生态系统分析,城市增长监测和水文模型输入参数的自动生成有关的示例。

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