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Progressive Compressively Sensed Band Processing for Hyperspectral Classification

机译:用于高光谱分类的渐进式压缩感测频带处理

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Compressive sensing (CS) has recently been demonstrated as an enabling technology for hyperspectral sensing on remote and autonomous platforms. The power, on-board storage, and computation requirements associated with the high dimensionality of hyperspectral images (HSI) are still limiting factors for many applications. A recent work has exploited the benefits of CS to perform HSI classification directly in the compressively sensed band domain (CSBD). Since the required number of compressively sensed bands (CSBs) needed to achieve full band performance varies with the complexity of an image scene, this article presents a progressive band processing (PBP) approach, called progressive CSB classification (PCSBC), to adaptively determine an appropriate number of CSBs required to achieve full band performance, while also providing immediate feedback from progressions of class classification predictions carried out by PCSBC. By taking advantage of PBP, new progression metrics and stopping criteria are also designed for PCSBC. Four real-world HSIs are used to demonstrate the utility of PCSBC.
机译:最近已经证明了压缩感应(CS)作为远程和自主平台上的高光谱传感的启用技术。与高光谱图像(HSI)高维度相关的电源,车载存储和计算要求仍然是许多应用的限制因素。最近的工作已经利用了CS直接在压缩感测的频带域(CSBD)中执行HSI分类的好处。由于实现全带性能所需的所需数量的压缩感测频带(CSB)随着图像场景的复杂性而变化,因此本文提出了一种被称为渐进式CSB分类(PCSBC)的渐进频带处理(PBP)方法,以便自适应地确定一个适当数量的CSB所需的CSB,以实现全频段性能,同时还提供了从PCSBC执行的类分类预测的进展的即时反馈。通过利用PBP,为PCSBC设计了新的进展度量和停止标准。四个现实世界HSIS用于演示PCSBC的效用。

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