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Detecting aircrafts from satellite images using saliency and conical pyramid based template representation

机译:使用显着性和基于圆锥形金字塔的模板表示从卫星图像中检测飞机

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Automatic target localization in satellite images still remains as a challenging problem in the field of computer vision. The issues involved in locating targets in satellite images are viewpoint, spectral (intensity) and scale variations. Diversity in background texture and target clutter also adds up to the complexity of the problem of localizing aircrafts in satellite images. Failure of modern feature extraction and object detection methods highlight the complexity of the problem. In the proposed work, pre-processing techniques, viz.denoising and contrast enhancement, are first used to improve the quality of the images. Then, the concept of unsupervised saliency is used to detect the potential regions of interest, which reduces the search space. Parts from the salient regions are further processed using clustering and morphological processing to get the probable regions of isolated aircraft targets. Finally, a novel conical pyramid based framework for template representation of the target samples is proposed for matching. Experimental results shown on a few satellite images exhibit the superior performance of the proposed methods.
机译:在计算机视觉领域,卫星图像中的自动目标定位仍然是一个具有挑战性的问题。在卫星图像中定位目标所涉及的问题是视点,光谱(强度)和比例变化。背景纹理和目标杂波的多样性也增加了在卫星图像中定位飞机的问题的复杂性。现代特征提取和对象检测方法的失败凸显了问题的复杂性。在提出的工作中,首先使用预处理技术(即降噪和对比度增强)来提高图像质量。然后,使用无监督显着性的概念来检测潜在的感兴趣区域,从而减少了搜索空间。使用聚类和形态学处理对来自显着区域的零件进行进一步处理,以获得孤立的飞机目标的可能区域。最后,提出了一种新颖的基于锥形金字塔的目标样本模板表示框架,用于匹配。在一些卫星图像上显示的实验结果显示了所提出方法的优越性能。

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