首页> 外文会议>Conference on Earth Observing Systems VII, Jul 7-10, 2002, Seattle, USA >Interactive models for semantic labeling of satellite images
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Interactive models for semantic labeling of satellite images

机译:卫星图像语义标注的交互式模型

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We describe a system for interactive training of models for semantic labeling of land cover. The models are build based on three levels of features: 1) pixel level, 2) region level, and 3) scene level features. We developed a Bayesian algorithm and a decision tree algorithm for interactive training. The Bayesian algorithm enables training based on pixel features. The scene level summaries of pixel features are used for fast retrieval of scenes with high/low content of features and scenes with low confidence of classification. The decision tree algorithm is based on region level features that are extracted based on 1) spectral and textural characteristics of the image, 2) shape descriptors of regions that are created through segmentation process, and 3) auxiliary information such as elevation data. The initial model can be created based on a database of ground truth and than be refined based on the feedback supplied by a data analyst who interactively trains the model using the system output and/or additional scenes. The combination of supervised and unsupervised methods provides a more complete exploration of model space. A user may detect the inadequacy of the model space and add additional features to the model. The graphical tools for the exploration of decision trees allow insight into the interaction of features used in the construction of models. The preliminary experiments show that accurate models can be build in a short time for a variety of land covers. The scalable classification techniques allow for fast searches for a specific label over a large area.
机译:我们描述了用于土地覆盖物语义标注模型的交互式训练系统。这些模型是基于以下三个级别的功能构建的:1)像素级别,2)区域级别和3)场景级别功能。我们开发了用于交互式训练的贝叶斯算法和决策树算法。贝叶斯算法可以基于像素特征进行训练。像素特征的场景级别摘要用于快速检索具有高/低特征含量的场景和具有低分类置信度的场景。决策树算法基于以下区域级特征:1)图像的光谱和纹理特征; 2)通过分割过程创建的区域的形状描述符; 3)辅助信息,例如高程数据。可以基于地面真实情况的数据库创建初始模型,然后根据数据分析师提供的反馈进行优化​​,该数据分析师使用系统输出和/或其他场景进行交互式训练。有监督和无监督方法的结合提供了对模型空间的更完整探索。用户可以检测到模型空间不足,并向模型添加其他功能。用于探索决策树的图形工具可以洞察模型构建中使用的功能的交互作用。初步实验表明,可以在短时间内为各种土地覆盖建立准确的模型。可扩展的分类技术允许在大范围内快速搜索特定标签。

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