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首页> 外文期刊>Optik: Zeitschrift fur Licht- und Elektronenoptik: = Journal for Light-and Electronoptic >Vehicle detection in remote sensing imagery based on salient information and local shape feature
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Vehicle detection in remote sensing imagery based on salient information and local shape feature

机译:基于显着信息和局部形状特征的遥感影像车辆检测

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Vehicle detection in high resolution optical imagery, with a variety of civil and military applications, has been widely studied. It is not an easy task since high resolution makes optical imagery complicated, which usually necessitates some rapid predetection methods followed by more accurate processes to accelerate the whole approach and to decrease false alarms. Given this "coarse to fine" strategy, we employ a new method to detect vehicles in remote sensing imagery. First, we convert the original panchromatic image into a "fake" hyperspectral form via a simple transformation, and predetect vehicles using a hyperspectral algorithm. Simple as it is, this transformation captures the salient information of vehicles, enhancing the separation between vehicle and clutter. Then to validate real vehicles from the predetected vehicle candidates, hypotheses for vehicles are generated using AdaBoost algorithm, with Haar-like feature serving as the local feature descriptor. This approach is tested on real optical panchromatic images as well as the simulated images extracted from hyperspectral images. The experiments indicate that the predetecting method is better than some existing methods such as principal component analysis based algorithm, Bayesian algorithm, etc. The whole process of our approach also performs well on the two types of data. (C) 2015 Elsevier GmbH. All rights reserved.
机译:高分辨率光学图像中的车辆检测已广泛应用于民用和军事领域。这不是一件容易的事,因为高分辨率会使光学图像变得复杂,这通常需要采取一些快速的预检测方法,然后采用更精确的过程来加快整个方法的速度并减少误报。鉴于这种“从粗到精”的策略,我们采用了一种新方法来检测遥感影像中的车辆。首先,我们通过简单的转换将原始全色图像转换为“伪”高光谱形式,并使用高光谱算法预先检测车辆。如此简单,此转换即可捕获车辆的重要信息,从而增强了车辆与杂物之间的距离。然后,为了从预先检测到的候选车辆中验证真实车辆,使用AdaBoost算法生成车辆假设,并使用类似Haar的特征作为局部特征描述符。此方法在真实的光学全色图像以及从高光谱图像中提取的模拟图像上进行了测试。实验表明,该预检测方法优于基于主成分分析的算法,贝叶斯算法等现有方法。该方法的整个过程在两种数据上也表现良好。 (C)2015 Elsevier GmbH。版权所有。

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