Mean-shift based object detection and clustering from high resolution remote sensing imagery

T. SushmaLeela, R. Chandrakanth, J. Saibaba, G. Varadan, S. Mohan
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引用次数: 2

Abstract

Object detection from remote sensing images has inherent difficulties due to cluttered backgrounds and noisy regions from the urban area in high resolution images. Detection of objects with regular geometry, such as circles from an image uses strict feature based detection. Using region based segmentation techniques such as K-Means has the inherent disadvantage of knowing the number of classes apriori. Contour based techniques such as Active contour models, sometimes used in remote sensing also has the problem of knowing the approximate location of the region and also the noise will hinder its performance. A template based approach is not scale and rotation invariant with different resolutions and using multiple templates is not a feasible solution. This paper proposes a methodology for object detection based on mean shift segmentation and non-parametric clustering. Mean shift is a non-parametric segmentation technique, which in its inherent nature is able to segment regions according to the desirable properties like spatial and spectral radiance of the object. A prior knowledge about the shape of the object is used to extract the desire object. A hierarchical clustering method is adopted to cluster the objects having similar shape and spatial features. The proposed methodology is applied on high resolution EO images to extract circular objects. The methodology found to be better and robust even in the cluttered and noisy background. The results are also evaluated using different evaluation measures.
基于均值偏移的高分辨率遥感影像目标检测与聚类
由于高分辨率遥感图像中城市地区的背景杂乱和噪声区域,从遥感图像中检测目标存在固有的困难。检测具有规则几何形状的物体,例如图像中的圆,使用严格的基于特征的检测。使用基于区域的分割技术,如K-Means,其固有的缺点是无法先验地知道类的数量。基于轮廓的技术,如主动轮廓模型,有时用于遥感也有知道区域的大致位置的问题,并且噪声会影响其性能。基于模板的方法在不同分辨率下不是缩放和旋转不变的,使用多个模板不是可行的解决方案。提出了一种基于均值偏移分割和非参数聚类的目标检测方法。均值移位是一种非参数分割技术,其本质是能够根据目标的空间和光谱辐射等理想属性对区域进行分割。利用关于物体形状的先验知识来提取想要的物体。采用层次聚类方法对具有相似形状和空间特征的目标进行聚类。将该方法应用于高分辨率EO图像中提取圆形目标。结果表明,该方法即使在杂乱、嘈杂的背景下也具有较好的鲁棒性。采用不同的评价方法对评价结果进行了评价。
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