Camouflaged target detection based on visible and near infrared polarimetric imagery fusion

Pu-cheng Zhou, Feng Wang, Hong-kun Zhang, Mo-gen Xue
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引用次数: 18

Abstract

How to distinguish the camouflage from its natural background is a challenging problem in target detection. As sensing technology advances, more and more information can be extracted from the scenes of interest. This includes spatial information captured by cameras, spectral information retrieved from spectrometers, and polarimetric information obtained by polarimeters. Spatial, spectral, and polarimetric information reveal the different characteristics of objects and background. While the spectral information tend to tell us about the distribution of material components in a scene, polarimetric information tells us about surface feature, shape, shading, and roughness. Polarization tends to provide information that is largely uncorrelated with spectral and intensity images, thus has the potential to enhance many fields of optical metrology. However, both spectral and polarimetric detection systems may suffer from substantial false alarms and missed detection because of their respective background clutter. Since polarimetric and multispectral imaging can provide complementary discriminative information, to distinguish the camouflage target from its natural background, in this paper the visible and near infrared polarimetric information is jointly utilized using imagery fusion technology. A polarimetric imagery fusion algorithm was first proposed based on polarized modified soil adjusted vegetation index to distinguish objects under vegetable environment. Then, the spectral and polarimetric information was fused by using false-color mapping and fuzzy c-means clustering algorithm for more robust object separation. Experimental results have shown that better identification performance was achieved.
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基于可见光和近红外偏振图像融合的伪装目标检测
如何将伪装与自然背景区分开来是目标探测中的一个难题。随着传感技术的进步,越来越多的信息可以从感兴趣的场景中提取出来。这包括由照相机捕获的空间信息、从光谱仪检索的光谱信息和由偏振仪获得的偏振信息。空间、光谱和偏振信息揭示了物体和背景的不同特征。光谱信息倾向于告诉我们场景中材料成分的分布,而偏振信息告诉我们表面特征、形状、阴影和粗糙度。偏振倾向于提供与光谱和强度图像在很大程度上不相关的信息,因此具有增强光学计量学许多领域的潜力。然而,由于各自的背景杂波,光谱和偏振检测系统都可能遭受严重的误报和漏检。由于偏振成像和多光谱成像可以提供互补的判别信息,为了将伪装目标与其自然背景区分开来,本文采用图像融合技术将可见光和近红外偏振信息联合利用。提出了一种基于极化修正土壤调整植被指数的极化影像融合算法,用于植物环境下的地物识别。然后,利用伪色映射和模糊c均值聚类算法融合光谱和偏振信息,实现更稳健的目标分离;实验结果表明,该方法具有较好的识别性能。
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