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首页> 外文期刊>Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of >Semantic and Spatial Co-Occurrence Analysis on Object Pairs for Urban Scene Classification
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Semantic and Spatial Co-Occurrence Analysis on Object Pairs for Urban Scene Classification

机译:城市场景分类中对象对的语义和空间共现分析

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Urban scene classifications with very-high-resolution (VHR) satellite images play an important role in urban functional-zone investigation and landscape analysis. Most scene classification techniques utilize visual features which however are weak in identifying scenes, as scenes are usually composed of diverse objects with variant visual cues. To resolve this issue, we use spatial object relations to characterize urban scenes and recognize their categories. Accordingly, two questions are considered in this study: how to measure spatial object relations and how to use these relations to classify urban scenes? First, we propose a novel scene feature, semantic and spatial co-occurrence probability (SSCP), to measure spatial relations between objects with considering their directions, distances, and semantics, which can hopefully resolve the three key issues in measuring spatial object relations, i.e., anisotropy, scale- and semantic-dependencies. Then, a semilatent Dirichlet allocation is employed to classify scenes based on the proposed SSCP. In experiments, our method is first verified based on the UC Merced data set, and then used to generate an urban functional-zone map for Beijing, China. Both experiments indicate high accuracies and state-of-the-art performances of our method. In addition, we give a deep insight into SSCP's characteristics including convergence, high efficiency, and invariance to affine transformation, which can make our method more applicable.
机译:具有超高分辨率(VHR)卫星图像的城市场景分类在城市功能区调查和景观分析中起着重要作用。大多数场景分类技术利用视觉特征,但是这些视觉特征在识别场景方面较弱,因为场景通常由具有不同视觉提示的各种对象组成。为了解决此问题,我们使用空间对象关系来表征城市场景并识别其类别。因此,本研究考虑了两个问题:如何测量空间对象关系以及如何使用这些关系对城市场景进行分类?首先,我们提出一种新颖的场景特征,即语义和空间共现概率(SSCP),以考虑对象的方向,距离和语义来度量对象之间的空间关系,有望解决测量空间对象关系的三个关键问题,即各向异性,比例和语义依赖性。然后,基于拟议的SSCP,采用半隐式Dirichlet分配对场景进行分类。在实验中,我们的方法首先基于UC Merced数据集进行了验证,然后用于生成中国北京的城市功能区图。这两个实验都表明我们的方法具有很高的准确性和最先进的性能。此外,我们深入了解了SSCP的特性,包括收敛性,高效性和仿射变换的不变性,这可以使我们的方法更加适用。

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