Polarization and Spectral Information Jointly Utilization in Targets Classification under Different Weather Conditions

Chao Chen, Yong-Qiang Zhao, Dan Liu, Q. Pan, Yong-mei Cheng
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引用次数: 1

Abstract

Although polarization and spectral information utilization has been received great attention with the sensor and detection technology advance, few results are showed to jointly utilize both of this information in targets classification. Polarization and spectral information reveals two different aspects of one single target, and therefore, if both of information is properly used, good performance would be achieved in the classification. In this paper, polarization and spectral information based on imagery is firstly acquired by spectropolarimeter imaging system. And then features that can represent polarization and spectral information, namely reflectance spectrum and degree of polarization spectrum, are extracted from imagery acquired respectively. As our built spectropolarimeter imaging system contains 33 bands at the range from 400 to 720nm, we proposed a custom band selection scheme which calculates the Euclidean distance of these two extracted features at each band, and select the bands which are respect to the former larger distances to achieve dimensional reduction. The reduced two features are inputted to Support Vector Machines respectively, and the degrees of membership belongs to each classes are assigned. Finally, we integrate these two features through fusion in the decision level using D-S theory. To highlight the advantages of jointly utilization of polarization and spectral information, classification results based on digital number (DN) value and any one single feature are compared to. And to prove the invariance of extracted features to weather conditions, we test the proposed jointly classification algorithm under two different weather conditions. The results based on the proposed method outperform the other three, and the advantage is much more evident in the cloudy weather.
偏振和光谱信息在不同天气条件下目标分类中的联合利用
虽然随着传感器和检测技术的进步,偏振和光谱信息的利用受到了人们的重视,但将这两种信息共同用于目标分类的结果却很少。偏振信息和光谱信息揭示了单个目标的两个不同方面,因此,如果正确使用这两种信息,可以在分类中取得良好的效果。本文首先利用分光偏振仪成像系统获取基于图像的偏振和光谱信息。然后分别从获取的图像中提取能够代表偏振和光谱信息的特征,即反射率光谱和偏振度光谱。由于我们构建的光谱偏振成像系统在400 ~ 720nm范围内包含33个波段,我们提出了一种自定义波段选择方案,该方案计算提取的两个特征在每个波段的欧几里得距离,并选择相对于前者更大距离的波段来实现降维。将约简后的两个特征分别输入到支持向量机中,分配每个类的隶属度。最后,利用D-S理论在决策层对这两个特征进行融合。为了突出偏振与光谱信息联合利用的优势,将基于数字数(DN)值的分类结果与任意单一特征的分类结果进行对比。为了证明提取的特征对天气条件的不变性,我们在两种不同的天气条件下对所提出的联合分类算法进行了测试。基于该方法的结果优于其他三种方法,并且在多云天气下优势更为明显。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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