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首页> 外文期刊>Defence Science Journal >Automatic Bright Circular Type Oil Tank Detection Using Remote Sensing Images
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Automatic Bright Circular Type Oil Tank Detection Using Remote Sensing Images

机译:利用遥感图像自动检测亮圆形油箱

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Automatic target detection like oil tank from satellite based remote sensing imagery is one of the important domains in many civilian and military applications. This could be used for disaster monitoring, oil leakage, etc. We present an automatic approach for detection of circular shaped bright oil tanks with high accuracy. The image is first enhanced to emphasize the bright objects using a morphological approach. Then, the enhanced image is segmented using split-and-merge segmentation technique. Here, we introduce a knowledge base strategy based on the region removal technique and spatial relationship operation for detection of possible oil tanks from the segmented image using minimal spanning tree. Lastly, we introduce a supervised classifier, for identification of oil tanks, based on the knowledge database of large amount data of oil tanks. The uniqueness of the proposed technique is that it is useful for detection bright oil tanks from high as well as low resolution images, but the technique is always better for high-resolution imagery. We have systematically evaluated the algorithm on different satellite images like IRS - 1C, IKONOS, QuickBird, and CARTOSAT - 2A. The proposed technique is detected bright structures but unable to detect the dark structure. If the oil tank structures are bright relative to the background illumination in the image then the detection accuracy by the proposed technique for the high resolution image is more than 95 per cent.
机译:自动目标检测(例如来自卫星遥感影像的油箱)是许多民用和军事应用中的重要领域之一。它可用于灾难监测,漏油等。我们提出了一种自动方法,可以高精度地检测圆形亮油箱。首先使用形态学方法增强图像以突出明亮的物体。然后,使用拆分合并分割技术对增强图像进行分割。在这里,我们介绍一种基于区域去除技术和空间关系运算的知识库策略,用于使用最小生成树从分割图像中检测可能的油箱。最后,基于油箱大量数据的知识数据库,引入了一种监督分类器,用于油箱的识别。所提出的技术的独特之处在于,它对于从高分辨率和低分辨率图像中检测明亮的油箱都非常有用,但是对于高分辨率图像而言,该技术总是更好的选择。我们已对IRS-1C,IKONOS,QuickBird和CARTOSAT-2A等不同卫星图像进行了系统评估。所提出的技术是检测到明亮的结构,但无法检测到黑暗的结构。如果油箱结构相对于图像中的背景照明明亮,则所提出的高分辨率图像检测技术的检测精度将超过95%。

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