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A Computational Approach to Hyperspectral Imaging for Long-range Target Identification

机译:用于远距离目标识别的高光谱成像的计算方法

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For long range targeting, the limited focal length and aperture size associated with compact imaging sensors for airborne operation limit both the spatial resolution and the image brightness. This presents a serious challenge to the identification and tracking of targets. Algorithms that derive target shape and track movement through a scene require a resolved image and use pixel contrast to discriminate the target image from the background. This is of limited use when practical deployment demands the use of compact imaging systems with necessarily limited spatial resolution. To address this we consider a 2D mosaic filters sampling scheme to acquire an incomplete multispectral data cube on a single frame readout from a focal plane array. Specifically, the sparse data cube contains 4×4 spatial cells and 16 wavebands with each waveband sampled once per cell; this corresponds to a 1/16 undersampling of the data cube. Complete multispectral images are then computed using compressed sensing protocols. Results obtained using hyperspectral datasets from AVIRIS and Stanford University (SCIEN) are presented to demonstrate image reconstruction using 16 wavebands in the visible and near infrared. The function of the mosaic filter is mimicked by sampling the full dataset according to the design of a theoretical mosaic filter. This allows us to investigate different sampling strategies and, in particular, make a direct comparison between random and regular sampling. Our results show that the reconstruction error is strongly dependent on both the colour content and the sampling strategy in the test images, and that very good reconstruction can be achieved approaching the spatial resolution of the original image. Our results can be applied to both the MWIR and LWIR where the lower spectral resolution means that a smaller number of wavebands is likely to be sufficient for identification and tracking. The concept can also be extended to polarimetric imaging with a suitable polarimetric filter mask to provide a dual-mode polarimetric-multispectral imaging capability. This paper presents an overview of the technical approach and the general conclusions.
机译:对于远距离瞄准,与紧凑型成像传感器(用于机载操作)相关的有限焦距和光圈大小限制了空间分辨率和图像亮度。这对目标的识别和跟踪提出了严峻的挑战。推导目标形状并跟踪场景运动的算法需要解析的图像,并使用像素对比度将目标图像与背景区分开。当实际部署需要使用必须具有有限空间分辨率的紧凑型成像系统时,这将受到有限的使用。为了解决这个问题,我们考虑使用2D马赛克滤波器采样方案,以在从焦平面阵列读出的单帧上获取不完整的多光谱数据立方体。具体来说,稀疏数据立方体包含4×4个空间像元和16个波段,每个波段每个像元采样一次。这对应于数据立方体的1/16欠采样。然后使用压缩传感协议计算出完整的多光谱图像。提出了使用AVIRIS和斯坦福大学(SCIEN)的高光谱数据集获得的结果,以证明使用16个波段的可见光和近红外图像进行图像重建。通过根据理论镶嵌滤波器的设计对整个数据集进行采样,可以模仿镶嵌滤波器的功能。这使我们能够研究不同的采样策略,尤其是在随机采样和常规采样之间进行直接比较。我们的结果表明,重建误差在很大程度上取决于测试图像中的颜色含量和采样策略,并且可以在接近原始图像的空间分辨率的情况下实现非常好的重建。我们的结果可以应用于MWIR和LWIR,其中较低的频谱分辨率意味着较小的波段数量可能足以识别和跟踪。该概念还可以扩展到具有合适的偏振滤光片掩模的偏振成像,以提供双模式偏振-多光谱成像功能。本文概述了技术方法和一般结论。

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