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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Unsupervised vector quantization-based target subspace projection approach to mixed pixel detection and classification in unknown background for remotely sensed imagery
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Unsupervised vector quantization-based target subspace projection approach to mixed pixel detection and classification in unknown background for remotely sensed imagery

机译:基于无监督矢量量化的目标子空间投影方法在遥感图像未知背景下的混合像素检测与分类

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摘要

A recently developed orthogonal subspace projection (OSP) approach has been successfully applied to AVIRIS as well as HYDICE data for image classification. However, it has found that OSP performs poorly in multispectral image classification such as 3-band SPOT data. This is primarily due to the fact that the number of signatures to be classified is greater than that of spectral bands used for data acquisition in which case the effects of uninterested signatures cannot be properly annihilated via orthogonal projection. This constraint, referred to as band number constraint (BNC) is generally not applied to hyperspectral images because the number of signatures resident within the images is usually far less than the total number of spectral bands. In this paper, a new approach, called unsupervised vector quantization-based target subspace projection (UVQTSP) is presented which can be implemented in an unknown environment with all required information obtained from the data to be processed. The proposed UVQTSP has practical advantages over OSP, specifically, it relaxes the band number constraint (BNC) so that it can be applied to multispectral imagery. The UVQTSP uses vector quantization to find a set of clusters representing the unknown signatures and interferers which will be eliminated prior to target detection and classification. The number of clusters can be determined by constraints such as the intrinsic dimensionality or the number of spectral bands. This process is carried out in an unsupervised manner without training data. The superiority of UVQTSP is demonstrated through real data including SPOT and HYDICE images.
机译:最近开发的正交子空间投影(OSP)方法已成功应用于AVIRIS以及HYDICE数据进行图像分类。然而,已经发现OSP在诸如3带SPOT数据的多光谱图像分类中表现较差。这主要是由于以下事实:要分类的签名的数量大于用于数据采集的光谱带的数量,在这种情况下,无法通过正交投影适当消除不感兴趣的签名的影响。通常将这种约束(称为带数约束(BNC))不适用于高光谱图像,因为驻留在图像内的签名数量通常远小于光谱带的总数。在本文中,提出了一种称为无监督矢量量化的目标子空间投影(UVQTSP)的新方法,该方法可以在未知环境中实现,并且需要从要处理的数据中获取所有必需信息。提出的UVQTSP具有优于OSP的实际优势,特别是它放宽了波段数约束(BNC),因此可以应用于多光谱图像。 UVQTSP使用矢量量化找到代表未知特征和干扰物的一组簇,这些簇将在目标检测和分类之前被消除。簇的数量可以通过诸如固有维数或光谱带的数量之类的约束条件来确定。此过程无需训练即可以无监督的方式进行。 UVQTSP的优越性通过包括SPOT和HYDICE图像在内的真实数据得以展示。

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