首页> 外文会议>Algorithms and Technologies for Multispectral, Hyperspectral, and Ultraspectral Imagery XII pt.1 >Perceptual display strategies of hyperspectral imagery based on PCA and ICA
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Perceptual display strategies of hyperspectral imagery based on PCA and ICA

机译:基于PCA和ICA的高光谱图像感知显示策略

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This study investigated appropriate methodologies for displaying hyperspectral imagery based on knowledge of human color vision as applied to Hyperion and AVIRIS data. Principal Component Analysis (PCA) and Independent Component Analysis (ICA) were used to reduce the data dimensionality in order to make the data more amenable to visualization in three-dimensional color space. In addition, these two methods were chosen because of their underlying relationships to the opponent color model of human color perception. PCA and ICA-based visualization strategies were then explored by mapping the first three PCs or ICs to several opponent color spaces including CIELAB, HSV, YCrCb, and YUV. The gray world assumption, which states that given an image with sufficient amount of color variations, the average color should be gray, was used to set the mapping origins. The rendered images are well color balanced and can offer a first look capability or initial classification for a wide variety of spectral scenes.
机译:这项研究基于适用于Hyperion和AVIRIS数据的人类彩色视觉知识,研究了显示高光谱图像的适当方法。使用主成分分析(PCA)和独立成分分析(ICA)来降低数据维数,以使数据更适合在三维色彩空间中可视化。此外,选择这两种方法是因为它们与人类色彩感知的对手色彩模型之间存在潜在的关系。然后,通过将前三个PC或IC映射到几个相对的色彩空间(包括CIELAB,HSV,YCrCb和YUV)来探索基于PCA和ICA的可视化策略。灰色世界假设(该假设表明给定图像具有足够数量的颜色变化),平均颜色应为灰色,用于设置映射原点。渲染的图像具有很好的色彩平衡,可以为多种光谱场景提供初视能力或初始分类。

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