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Real-Time Target Detection Architecture Based on; Reduced Complexity Hyperspectral Processing

机译:基于实时目标检测的架构;降低复杂度的高光谱处理

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This paper presents a real-time target detection architecture for hyperspectral image processing. The architecture is based on a reduced complexity algorithm for high-throughput applications.We propose an efficient pipelined processing element architecture and a scalable multiple-processing element architecture by exploiting data partitioning. We present a processing unit modeling based on the data reduction algorithm in hyperspectral image processing and propose computing structure, that is, to optimize memory usage and eliminates memory bottleneck. We investigate the interconnection topology for the multipleprocessing element architecture to improve the speed. The proposed architecture is designed and implemented in FPGA to illustrate the relationship between hardware complexity and execution throughput of hyperspectral image processing for target detection.
机译:本文提出了一种用于高光谱图像处理的实时目标检测架构。该架构基于针对高吞吐量应用程序的降低复杂性算法。我们通过利用数据分区,提出了一种高效的流水线处理元素架构和可扩展的多处理元素架构。我们提出了一种基于数据约简算法的高光谱图像处理处理单元建模,并提出了计算结构,即优化内存使用并消除内存瓶颈。我们研究了多处理元素体系结构的互连拓扑,以提高速度。在FPGA中设计并实现了所提出的体系结构,以说明硬件复杂度与用于目标检测的高光谱图像处理的执行吞吐量之间的关系。

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