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

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作者
Kyoung-Su Park
Shung Han Cho
Sangjin Hong
We-Duke Cho
机构
[1] Stony Brook University-SUNY,Mobile Systems Design Laboratory, Department of Electrical and Computer Engineering, College of Engineering and Apllied Sciences
[2] Ajou University,Division of Electrical & Computer Engineering, College of Information Technology
关键词
Processing Element; Target Detection; Memory Usage; Reduction Algorithm; Unit Modeling;
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摘要
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.
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