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High-level FPGA-based implementation of a hyperspectral endmember extraction algorithm

机译:基于FPGA的高光谱端成员提取算法的高级实现

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Linear spectral unmixing represents an awesome technique for the analysis of remotely sensed hyperspectral images. However, its large computational cost severely compromises its use in applications under real-time constraints, where swift responses are of a crucial importance. Hence, the hardware acceleration of the operations involved in the unmixing of a hyperspectral cube becomes mandatory for these scenarios. This paper presents an improved version of a design flow that allows implementing a hyperspectral unmixing algorithm onto a Field Programmable Gate Array (FPGA) directly from MATLAB. As a case of study, the results obtained with the implementation of the well-known N-FINDR algorithm will be outlined, demonstrating the benefits of our proposal against state-of-the-art approaches as well as the profits derived from the adoption of fixed rather floating-point arithmetic. The presented high level methodology can be easily extrapolated to the implementation of other hyperspectral MATLAB algorithms, drastically accelerating the design cycle from concept to implementation.
机译:线性光谱分解代表了一种用于分析遥感高光谱图像的出色技术。但是,其庞大的计算成本严重损害了其在实时约束下的应用程序中的使用,在实时约束中,快速响应至关重要。因此,在这些情况下,必须取消涉及高光谱立方体的混合操作的硬件加速。本文提出了一种设计流程的改进版本,它允许直接从MATLAB到现场可编程门阵列(FPGA)上实现高光谱解混算法。作为研究的案例,将概述通过实施著名的N-FINDR算法获得的结果,以证明我们的建议相对于最新方法的好处以及采用该方法所获得的收益固定而不是浮点运算。提出的高级方法可以轻松地外推到其他高光谱MATLAB算法的实现中,从而极大地加快了从概念到实现的设计周期。

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