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首页> 外文期刊>International journal of image and data fusion >Semantic annotation in earth observation based on active learning
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Semantic annotation in earth observation based on active learning

机译:基于主动学习的地球观测语义标注

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As the data acquisition capabilities of earth observation (EO) satellites have been improved significantly, a large amount of high-resolution images are downlinked continuously to ground stations. The data volume increases rapidly beyond the users' capability to access the information content of the data. Thus, interactive systems that allow fast indexing of high-resolution images based on image content are urgently needed. In this paper, we present an interactive learning system for semantic annotation and content mining at patch level. It mainly comprises four components: primitive feature extraction including both spatial and temporal features, relevance feedback based on active learning, a human machine communication (HMC) interface and data visualisation. To overcome the shortage of training samples and to speed up the convergence, active learning is employed in this system. Two core components of active learning are the classifier training using already labelled image patches, and the sample selection strategy which selects the most informative samples for manual labelling. These two components work alternatively, significantly reducing the labelling effort and achieving fast indexing. In addition, our data visualisation is particularly designed for multi-temporal and multi-sensor image indexing, where efficient visualisation plays a critical role. The. system is applicable to both optical and synthetic aperture radar images. It can index patches and it can also discover temporal patterns in satellite image time series. Three typical case studies are included to show its wide use in EO applications.
机译:由于对地观测(EO)卫星的数据采集能力已得到显着提高,因此大量高分辨率图像连续不断地下行传输到地面站。数据量迅速增加,超出了用户访问数据信息内容的能力。因此,迫切需要允许基于图像内容快速索引高分辨率图像的交互式系统。在本文中,我们提出了一个交互式学习系统,用于在补丁程序级别进行语义注释和内容挖掘。它主要包括四个组件:原始特征提取(包括空间和时间特征),基于主动学习的相关性反馈,人机通信(HMC)界面和数据可视化。为了克服训练样本的不足并加快收敛速度​​,该系统采用了主动学习。主动学习的两个核心组成部分是使用已经标记的图像补丁进行分类器训练,以及选择信息最多的样本进行手动标记的样本选择策略。这两个组件交替工作,大大减少了贴标签工作并实现了快速索引。此外,我们的数据可视化是专为多时间和多传感器图像索引而设计的,其中高效的可视化起着至关重要的作用。的。该系统适用于光学和合成孔径雷达图像。它可以索引补丁,还可以发现卫星图像时间序列中的时间模式。包括三个典型案例研究,以显示其在EO应用中的广泛使用。

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