FPGA Optimization for Hyperspectral Target Detection with Collaborative Representation

Peidi Yang, Wei Li, Xuebin Li, Lianru Gao
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引用次数: 1

Abstract

Currently, remote sensing image processing raises much higher requirements on the computing platform and processing speed. The high speed, low power, reconfigurable and radiation resistance features of Field Programmable Gate Arrays (FPGA) makes it become a better choice for real-time processing in hyperspectral imagery. In this paper, we have optimized the newly proposed hyperspectral target detection algorithm based on FPGA. The collaborative representation is a high-efficiency target detection (CRD) algorithm in hyperspectral imagery, which is directly based on the concept that the target pixels can be approximately represented by its spectral signatures, while the other cannot. Using the Sherman-Morrison formula to calculate the matrix inversion and the difficulty of implementing the overall CRD algorithm on the FPGA is reduced. The running speed of parallel programming is greatly promoted on the FPGA under the premise of reasonable resources. The experimental results demonstrate that the proposed system has significantly improved the processing time when compared to the pre-optimized system and the 3.40 GHzCPU.
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基于协同表示的高光谱目标检测FPGA优化
目前,遥感图像处理对计算平台和处理速度提出了更高的要求。现场可编程门阵列(FPGA)具有高速、低功耗、可重构和抗辐射等特点,成为高光谱图像实时处理的较好选择。本文对新提出的基于FPGA的高光谱目标检测算法进行了优化。协同表示是一种高效的高光谱图像目标检测(CRD)算法,它直接基于目标像素可以用其光谱特征近似表示,而其他像素不能的概念。利用Sherman-Morrison公式计算矩阵反演,降低了整个CRD算法在FPGA上实现的难度。在资源合理的前提下,大大提高了FPGA上并行编程的运行速度。实验结果表明,与预先优化的系统和3.40 GHzCPU相比,该系统显著提高了处理时间。
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