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首页> 外文期刊>International journal of applied mechanics >Urban Land-Cover Classification Using Side-View Information from Oblique Images
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Urban Land-Cover Classification Using Side-View Information from Oblique Images

机译:城市土地覆盖分类使用斜图像的侧视图信息

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Land-cover classification on very high resolution data (decimetre-level) is a well-studied yet challenging problem in remote sensing data processing. Most of the existing works focus on using images with orthographic view or orthophotos with the associated digital surface models (DSMs). However, the use of the nowadays widely-available oblique images to support such a task is not sufficiently investigated. In the effort of identifying different land-cover classes, it is intuitive that information of side-views obtained from the oblique can be of great help, yet how this can be technically achieved is challenging due to the complex geometric association between the side and top views. We aim to address these challenges in this paper by proposing a framework with enhanced classification results, leveraging the use of orthophoto, digital surface models and oblique images. The proposed method contains a classic two-step of (1) feature extraction and (2) a classification approach, in which the key contribution is a feature extraction algorithm that performs simplified geometric association between top-view segments (from orthophoto) and side-view planes (from projected oblique images), and joint statistical feature extraction. Our experiment on five test sites showed that the side-view information could steadily improve the classification accuracy with both kinds of training samples (1.1% and 5.6% for evenly distributed and non-evenly distributed samples, separately). Additionally, by testing the classifier at a large and untrained site, adding side-view information showed a total of 26.2% accuracy improvement of the above-ground objects, which demonstrates the strong generalization ability of the side-view features.
机译:在非常高分辨率数据(Decimetre-Level)上的陆地覆盖分类是遥感数据处理中的一个良好的尚容挑战性问题。现有的大多数工作都侧重于使用带有正交视图或与相关数字表面模型(DSM)的orthophotos的图像。然而,使用现在的广泛可用的倾斜图像来支持这种任务不充分地研究。在识别不同的土地覆盖类别的努力中,从倾斜获得的侧视图信息可能具有很大的帮助,但在技术上,如何实现这一目标是由于侧面和顶部之间的复杂几何关联而挑战意见。我们的目标是通过提出具有增强的分类结果的框架来解决这些挑战,利用使用矫正器,数字表面模型和倾斜图像。所提出的方法包含经典的两步(1)特征提取和(2)分类方法,其中关键贡献是在顶视图(来自orthophoto)和侧面之间的简化几何关联的特征提取算法。查看平面(从投影斜图像)和联合统计特征提取。我们对五个测试站点的实验表明,侧视信息可以稳定地提高两种训练样本(均匀分布和非均匀分布的样品的训练样本(1.1%和5.6%)。另外,通过在大型和未培训的站点测试分类器,添加侧视图信息显示出上面的对象的总和改善了26.2%,这表明了侧视图特征的强大泛化能力。

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