高光谱目标检测算法的硬件/软件实现

Dordije Boskovic, M. Orlandić, Sivert Bakken, T. Johansen
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引用次数: 4

摘要

成像光谱仪获得的高光谱图像包含大量的数据,需要目标检测等技术来提取有用的信息。提出了一种基于自适应余弦估计(ACE)的高光谱图像目标检测方法。该算法在Zynq-7000开发平台上以软硬件分区的方式实现。在FPGA上对计算密集型运算进行加速,加速系数为28.54。时序分析给出了分区系统的时序分析结果,以及用于比较的Zynq处理系统上的软件实现。使用公开可用的高光谱场景和地面真实数据对所实现算法的检测性能进行了测试和验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
HW/SW Implementation of Hyperspectral Target Detection Algorithm
Hyperspectral images obtained by imaging spectrometer contain a vast amount of data which require techniques such as target detection to extract useful information. This article presents an implementation of the target detection method Adaptive Cosine Estimator (ACE) for hyperspectral images. The algorithm is implemented as hardware-software partitioned system on Zynq-7000 development platform. The computationally intensive operations are accelerated on FPGA with the speedup factor of 28.54. The timing analysis presents results for the partitioned system as well as for the software implementation on Zynq processing system used for comparison. The detection performance of the implemented algorithm is tested and verified using publicly available hyperspectral scenes with ground truth data.
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