首页> 外文会议>Asian conference on remote sensing;ACRS >COMPARISON OF SEGMENTATION INPUTS FOR OBJECT-BASED UNSUPERVISED CHANGE DETECTION BETWEEN VERY-HIGH-RESOLUTION BI-TEMPORAL IMAGES
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COMPARISON OF SEGMENTATION INPUTS FOR OBJECT-BASED UNSUPERVISED CHANGE DETECTION BETWEEN VERY-HIGH-RESOLUTION BI-TEMPORAL IMAGES

机译:高分辨率双时相图像中基于对象的无监督变化检测中分段输入的比较

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Due to a high level of spatial complexity and heterogeneity in very-high-resolution (VHR) imagery, an object-based unsupervised change detection approach instead of a pixel-based approach is generally conducted for VHR imagery. Segmentation methods that subdivide an image into meaningful homogeneous regions and organize them into image objects corresponding to ground entities have been developed. However, few studies have focused on determining common boundaries of objects in bi-temporal images for the change detection. Therefore, we investigated and compared segmentation inputs, with the goal of minimizing inconsistent boundaries between bi-temporal images, to obtain an optimal object-based unsupervised change detection result. For this purpose, simple linear iterative clustering (SLIC) was selected as a segmentation approach due to its computational efficiency. We carried out SLiC-based segmentation for bi-temporal images with five different segmentation inputs: i) Tl image, ii) T2 image, iii) difference image of the bi-temporal images, iv) principal component analysis-based image, and v) intersection image. After defining the segmentation results according to each input, the average pixel value of the band in each segment was calculated and allocated to the segment to process the change detection further. Change vector analysis (CVA) was implemented to conduct the unsupervised change detection. Bitemporal Kompsat-2 satellite images were used to generate a study site for implementing the experiments. From the experiments, we demonstrated that using one image or using a difference image for generating the segmentation map produces better change detection results than the results obtained by the intersection of two segmentation results.
机译:由于高分辨率(VHR)图像中的高水平空间复杂性和异质性,通常对VHR图像进行基于对象的无监督变化检测方法而不是基于像素的方法。分割方法将图像细分为有意义的均匀区域并使它们组织成对应于地面实体的图像对象。然而,很少有研究专注于确定用于改变检测的双时隙中对象的共同边界。因此,我们调查并比较了分割输入,目的是最大限度地减少双颞图像之间不一致的边界,以获得最佳基于对象的无监督变化检测结果。为此目的,由于其计算效率,选择了简单的线性迭代聚类(SLIC)作为分段方法。我们对具有五个不同分割输入的双时隙图像进行了基于SLIC的分割:i)T1图像,ii)T2图像,III)基于双时隙图像IV的Pirthipal成分分析的图像,以及V )交叉图像。在根据每个输入定义分割结果之后,计算每个段中的带的平均像素值并将其分配给段以进一步处理变化检测。实施改变载体分析(CVA)进行了无监督的变化检测。磅扑普通Kompsat-2卫星图像用于生成用于实施实验的研究现场。从实验中,我们证明使用一个图像或使用用于产生分割图的差异图像产生比通过两个分段结果所获得的结果的更好的变化检测结果。

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