高光谱成像
像素
人工智能
计算机科学
随机森林
模式识别(心理学)
遥感
羽流
图像分割
协方差矩阵
环境科学
分割
算法
地理
气象学
作者
Scout Jarman,Tory Carr,Z. Hampel-Arias,Eric Flynn,Kevin R. Moon
摘要
Longwave Infrared hyperspectral images (LWIR HSI) are a powerful data source for various applications in national security and environmental monitoring. A promising area for applying machine learning to LWIR HSI data is for gas plume identification from remote sensing platforms. However, a significant practical difficulty in using HSI for this task is the ability to estimate and remove the background spectra underlying a detected gas plume. Typically, one estimates a covariance matrix and a mean spectrum using all pixels from an image to whiten the pixels of interest before substance identification. We propose using image segmentation to define local regions to perform this whitening. We investigate both local and global estimation of the covariance and mean spectrum, and find that using the global covariance and local mean increases prediction confidence using our deep learning classification model. Using an airborne LWIR capture of the Los Angeles basin, we investigate performance increases by generating an ensemble of random marker-based Watershed segmentations. The ensemble of segmentations provides nuanced mean estimates for each pixel in the gas plume, leading to increased machine learning classification confidence. This method shows significant promise for improving machine learning classification applied to real-world HSI collects.
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