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Change detection for high-resolution remote sensing imagery using object-oriented change vector analysis method

机译:基于面向对象的变化矢量分析方法的高分辨率遥感影像变化检测

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Change Vector Analysis (CVA) is an important change detection method for remote sensing imagery with medium and low resolution. Traditional CVA is a pixel-based method, which is insufficient for high-resolution (HR) imagery. An object-oriented change vector analysis method (OCVA) is proposed in the paper. Image segmentation method was used to get image objects. The object histogtam was extracted as the feature of the image object at different bands. G statistic was employed to measure the distance between the object histograms at two times. Change vector of the object was built by the histogram distance at different bands. The heterogeneity of the object was measured by the magnitude of the object change vector. The threshold to detect changeo change objects was decided by Otsu method which maximizes the variance between change objects and unchanged objects. The experimental results on QuickBird images show that OCVA can make full use of the spatial information in HR images and get higher accuracy than pixel-based CVA.
机译:改变载体分析(CVA)是一种具有中低分辨率遥感图像的重要变化检测方法。传统的CVA是一种基于像素的方法,这对于高分辨率(HR)图像不足。本文提出了面向对象的改变载体分析方法(OCVA)。图像分段方法用于获取图像对象。将对象组织组织作为不同频带处的图像对象的特征提取。 G统计学被用于测量对象直方图的距离两次。通过不同频带的直方图距离构建对象的变更矢量。通过物体改变载体的大小测量物体的异质性。检测更改/无变化对象的阈值由OTSU方法决定,该方法最大化了更改对象和不变对象之间的方差。 QuickBird图像的实验结果表明,OCVA可以充分利用HR图像中的空间信息,并比基于像素的CVA更高的精度。

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