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Rapid hyperspectral image classification to enable autonomous search systems

机译:快速的高光谱图像分类可实现自主搜索系统

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Author Summary: The emergence of lightweight full-frame hyperspectral cameras is destined to enable autonomous search vehicles in the air, on the ground and in water. Self-contained and long-endurance systems will yield important new applications, for example, in emergency response and the timely identification of environmental hazards. One missing capability is rapid classification of hyperspectral scenes so that search vehicles can immediately take actions to verify potential targets. Onsite verifications minimise false positives and preclude the expense of repeat missions. Verifications will require enhanced image quality, which is achievable by either moving closer to the potential target or by adjusting the optical system. Such a solution, however, is currently impractical for small mobile platforms with finite energy sources. Rapid classifications with current methods demand large computing capacity that will quickly deplete the on-board battery or fuel. To develop the missing capability, the authors propose a low-complexity hyperspectral image classifier that approaches the performance of prevalent classifiers. This research determines that the new method will require at least 19-fold less computing capacity than the prevalent classifier. To assess relative performances, the authors developed a benchmark that compares a statistic of library endmember separability in their respective feature spaces.
机译:作者摘要:轻型全画幅高光谱相机的出现注定要使自动搜索车辆能够在空中,地面和水中进行。自给自足和持久的系统将产生重要的新应用,例如在应急响应和及时识别环境危害方面。一种缺少的功能是对高光谱场景进行快速分类,以使搜索工具可以立即采取行动以验证潜在目标。现场验证可最大程度减少误报,并避免重复执行任务的费用。验证将需要提高图像质量,这可以通过靠近潜在目标或调整光学系统来实现。然而,这种解决方案目前对于具有有限能源的小型移动平台是不切实际的。使用当前方法进行快速分类需要巨大的计算能力,这将迅速耗尽车载电池或燃料。为了开发缺少的功能,作者提出了一种低复杂度的高光谱图像分类器,该分类器可以接近流行的分类器的性能。这项研究确定,这种新方法所需的计算能力至少比流行的分类器低19倍。为了评估相对性能,作者开发了一个基准,用于比较各自特征空间中库末端成员可分离性的统计信息。

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