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Urban Land Cover Classification of Oblique Aerial Imagery Using Object-based Image Analysis Method

机译:基于对象的图像分析方法的城市土地覆盖斜空中图像分类

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By means of airborne multiple camera imaging system, we can acquire vertical and oblique aerial images (VAI and OAI) at the same time. In addition to the reduction of data cost, the OAI can also strengthen the imaging geometry during aerial triangulation and be applied on automatic facade texture mapping. With the development of image matching technique, instead of airborne laser scanning (ALS), we can obtain surface point clouds by dense matching through both VAIs and OAIs. Comparing to the ALS data that were affected by the laser scanning angle, the photogrammetric points can provide much more information on the facade of buildings since the given information from the OAI. Therefore, the use of OAI in building verification and detection, 3D GIS, digital maps or other cyber-city related applications. In this study, we perform image classification using the original oblique aerial imagery and object-based image analysis (OBIA) method. We classify the OAI into six classes namely tree, grass, facade, roof, road and others. In OBIA, we utilize the multiresolution segmentation algorithm to separate the image into objects by merging pixels with similar color and shape homogeneity. Then, the objects are classified by different features such as color, shape, texture and object related features. In our study, we also use the "height map" and "gradient map" generated by back projecting the dense matched point clouds to the OAI to assist for urban object detection. The classification result shows that we can differentiate facade and roof from buildings successfully with the assistant of the height and gradient information. In the meanwhile, the classification result can further offer the semantic information from the OAI to 3D building models.
机译:通过空气传播的多个相机成像系统,我们可以同时获得垂直和倾斜的空中图像(Vai和Oai)。除了减少数据成本之外,OAI还可以在空中三角测量期间加强成像几何体,并应用于自动门面纹理映射。随着图像匹配技术的发展,而不是机载激光扫描(ALS),我们可以通过VAIS和OAI的密集匹配来获得表面点云。与受激光扫描角度影响的ALS数据相比,摄影测量点可以在来自OAI的给定信息以来,在建筑物外观上提供更多信息。因此,在建设验证和检测,3D GIS,数字地图或其他网络城市相关应用中使用OAI。在本研究中,我们使用原始倾斜空中图像和基于对象的图像分析(OBIA)方法进行图像分类。我们将Oai分类为六个课程,即树,草,门面,屋顶,道路等。在OBIA中,我们利用多分辨率分割算法通过合并具有类似颜色和形状同质性的像素来将图像分离为对象。然后,对象由不同的功能分类,例如颜色,形状,纹理和对象相关的功能。在我们的研究中,我们还使用后面将密集的匹配点云投影到OAI的“高度地图”和“渐变图”,以帮助城市对象检测。分类结果表明,我们可以通过高度和梯度信息的助手成功地将门面和屋顶区分开来。同时,分类结果可以进一步向3D构建模型提供从OAI的语义信息。

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