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Detection and tracking of gas plumes in LWIR hyperspectral video sequence data

机译:LWIR高光谱视频序列数据中气体羽流的检测和跟踪

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Automated detection of chemical plumes presents a segmentation challenge. The segmentation problem for gas plumes is difficult due to the diffusive nature of the cloud. The advantage of considering hyperspectral images in the gas plume detection problem over the conventional RGB imagery is the presence of non-visual data, allowing for a richer representation of information. In this paper we present an effective method of visualizing hyperspectral video sequences containing chemical plumes and investigate the effectiveness of segmentation techniques on these post-processed videos. Our approach uses a combination of dimension reduction and histogram equalization to prepare the hyperspectral videos for segmentation. First, Principal Components Analysis (PCA) is used to reduce the dimension of the entire video sequence. This is done by projecting each pixel onto the first few Principal Components resulting in a type of spectral filter. Next, a Midway method for histogram equalization is used. These methods redistribute the intensity values in order to reduce flicker between frames. This properly prepares these high-dimensional video sequences for more traditional segmentation techniques. We compare the ability of various clustering techniques to properly segment the chemical plume. These include K-means, spectral clustering, and the Ginzburg-Landau functional.
机译:自动化检测化学羽流提出了挑战。由于云的扩散性,气柱的分割问题很困难。与常规RGB图像相比,在气体羽流检测问题中考虑高光谱图像的优势在于存在非可视数据,从而可以实现更丰富的信息表示。在本文中,我们提出了一种可视化包含化学羽流的高光谱视频序列的有效方法,并研究了分割技术在这些后处理视频上的有效性。我们的方法结合使用降维和直方图均衡化来准备用于分割的高光谱视频。首先,主成分分析(PCA)用于减小整个视频序列的尺寸。这是通过将每个像素投影到前几个主要分量上来完成的,从而产生一种光谱过滤器。接下来,使用用于直方图均衡的中途方法。这些方法重新分配强度值,以减少帧之间的闪烁。这样就为更传统的分割技术正确准备了这些高维视频序列。我们比较了各种聚类技术正确分割化学羽的能力。这些包括K均值,频谱聚类和Ginzburg-Landau函数。

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