论文标题
高光谱图像的无监督扩散和体积最大化聚类
Unsupervised Diffusion and Volume Maximization-Based Clustering of Hyperspectral Images
论文作者
论文摘要
从飞机或卫星上拍摄的高光谱图像包含来自数百个光谱带的信息,其中潜在的低维结构可用于对植被和其他材料进行分类。使用高光谱图像的缺点是,由于光谱和空间分辨率之间的固有权衡,它们具有相对粗糙的空间尺度,这意味着单像素可能对应于包含多种材料的空间区域。本文介绍了基于无监督的材料聚类的扩散和最大化图像聚类(D-VIC)算法,以解决此问题。通过将像素纯度直接掺入其标记过程中,D-VIC对与仅包含单个材料的空间区域相对应的像素给对应的像素更大。在广泛的实验中,D-VIC在一系列高光谱图像中的广泛实验中表现出色,包括土地利用图和高度混合的森林健康调查(在Ash Dieback病的背景下),这意味着它可以很好地适合于对光谱型高光谱数据集体的无处可比性材料聚类。
Hyperspectral images taken from aircraft or satellites contain information from hundreds of spectral bands, within which lie latent lower-dimensional structures that can be exploited for classifying vegetation and other materials. A disadvantage of working with hyperspectral images is that, due to an inherent trade-off between spectral and spatial resolution, they have a relatively coarse spatial scale, meaning that single pixels may correspond to spatial regions containing multiple materials. This article introduces the Diffusion and Volume maximization-based Image Clustering (D-VIC) algorithm for unsupervised material clustering to address this problem. By directly incorporating pixel purity into its labeling procedure, D-VIC gives greater weight to pixels that correspond to a spatial region containing just a single material. D-VIC is shown to outperform comparable state-of-the-art methods in extensive experiments on a range of hyperspectral images, including land-use maps and highly mixed forest health surveys (in the context of ash dieback disease), implying that it is well-equipped for unsupervised material clustering of spectrally-mixed hyperspectral datasets.