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FPGA Design and Implementation of a Fast Pixel Purity Index Algorithm for Endmember Extraction in Hyperspectral Imagery

机译:高光谱图像中端元提取的快速像素纯度指标算法的FPGA设计和实现

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Hyperspectral imagery is a class of image data which is used in many scientific areas, most notably, medical imaging and remote sensing. It is characterized by a wealth of spatial and spectral information. Over the last years, many algorithms have been developed with the purpose of finding "spectral endmembers," which are assumed to be pure signatures in remotely sensed hyperspectral data sets. Such pure signatures can then be used to estimate the abundance or concentration of materials in mixed pixels, thus allowing sub-pixel analysis which is crucial in many remote sensing applications due to current sensor optics and configuration. One of the most popular endmember extraction algorithms has been the pixel purity index (PPI), available from Kodak's Research Systems ENVI software package. This algorithm is very time consuming, a fact that has generally prevented its exploitation in valid response times in a wide range of applications, including environmental monitoring, military applications or hazard and threat assessment/tracking (including wildland fire detection, oil spill mapping and chemical and biological standoff detection). Field programmable gate arrays (FPGAs) are hardware components with millions of gates. Their reprogrammability and high computational power makes them particularly attractive in remote sensing applications which require a response in near real-time. In this paper, we present an FPGA design for implementation of PPI algorithm which takes advantage of a recently developed fast PPI (FPPI) algorithm that relies on software-based optimization. The proposed FPGA design represents our first step toward the development of a new reconfigurable system for fast, onboard analysis of remotely sensed hyperspectral imagery.
机译:高光谱图像是一类图像数据,可用于许多科学领域,尤其是医学成像和遥感。它具有大量的空间和光谱信息。在过去的几年中,已经开发了许多算法,目的是发现“光谱末端成员”,这些成员被认为是遥感高光谱数据集中的纯签名。然后,可以使用这种纯签名来估计混合像素中材料的丰度或浓度,从而可以进行子像素分析,由于当前的传感器光学器件和配置,该子像素分析在许多遥感应用中至关重要。像素提取指数(PPI)是最受欢迎的端成员提取算法之一,可从柯达的Research Systems ENVI软件包中获得。该算法非常耗时,事实上,它通常阻止了它在广泛的应用中以有效的响应时间进行开发,包括环境监测,军事应用或危害和威胁评估/跟踪(包括野外火灾探测,溢油测绘和化学处理)和生物隔离检测)。现场可编程门阵列(FPGA)是具有数百万个门的硬件组件。它们的可重编程性和高计算能力使它们在要求近实时响应的遥感应用中特别有吸引力。在本文中,我们介绍了一种用于实现PPI算法的FPGA设计,该设计利用了最近开发的快速PPI(FPPI)算法,该算法依赖于基于软件的优化。拟议的FPGA设计代表了我们开发新的可重新配置系统的第一步,该系统可用于快速,机载分析遥感高光谱图像。

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