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Novel Object-Based Filter for Improving Land-Cover Classification of Aerial Imagery with Very High Spatial Resolution

机译:新型的基于对象的滤波器,用于以非常高的空间分辨率改善航空影像的土地覆盖分类

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摘要

Land cover classification using very high spatial resolution (VHSR) imaging plays a very important role in remote sensing applications. However, image noise usually reduces the classification accuracy of VHSR images. Image spatial filters have been recently adopted to improve VHSR image land cover classification. In this study, a new object-based image filter using topology and feature constraints is proposed, where an object is considered as a central object and has irregular shapes and various numbers of neighbors depending on the nature of the surroundings. First, multi-scale segmentation is used to generate a homogeneous image object and extract the corresponding vectors. Then, topology and feature constraints are proposed to select the adjacent objects, which present similar materials to the central object. Third, the feature of the central object is smoothed by the average of the selected objects’ feature. This proposed approach is validated on three VHSR images, ranging from a fixed-wing aerial image to UAV images. The performance of the proposed approach is compared to a standard object-based approach (OO), object correlative index (OCI) spatial feature based method, a recursive filter (RF), and a rolling guided filter (RGF), and has shown a 6%–18% improvement in overall accuracy.
机译:使用超高空间分辨率(VHSR)成像的土地覆盖分类在遥感应用中起着非常重要的作用。但是,图像噪声通常会降低VHSR图像的分类精度。最近已采用图像空间滤波器来改善VHSR图像土地覆盖分类。在这项研究中,提出了一种使用拓扑和特征约束的新的基于对象的图像滤镜,其中,一个对象被视为中心对象,并具有不规则的形状,并且根据周围环境的性质,其邻居数量不等。首先,使用多尺度分割生成均匀图像对象并提取相应的向量。然后,提出拓扑和特征约束以选择相邻对象,这些对象与中心对象呈现相似的材质。第三,中心对象的特征通过所选对象特征的平均值进行平滑处理。在从固定翼航空图像到无人机图像的三个VHSR图像上验证了此提议的方法。将该方法的性能与标准的基于对象的方法(OO),基于对象相关指数(OCI)的空间特征方法,递归过滤器(RF)和滚动导向过滤器(RGF)进行了比较,并显示了总体准确度提高6%–18%。

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