High-throughput implementation of a million-point sparse Fourier Transform

FPL(2014)

引用 37|浏览29
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摘要
The emergence of data-intensive problems in areas like computational biology, astronomy, medical imaging, etc. has emphasized the need for fast and efficient very large Fourier Transforms. Recent work has shown that we can compute million-point transforms efficiently provided the data is sparse in the frequency domain. Processing input samples at rates approaching 1 GHz would allow real-time processing in several such applications. In this paper, we present a high-throughput FPGA implementation that performs a million-point sparse Fourier Transform on frequency-sparse input data, generating the largest 500 frequency component locations and values every 1.16 milliseconds. This design can process streamed input data at 0.86 Giga samples per second, and does not make any assumptions of the distribution of the frequency components beyond sparsity.
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关键词
fourier transforms,frequency-sparse input data,frequency-domain analysis,high-throughput implementation,astronomy,data intensive problems,high-throughput fpga implementation,frequency domain,field programmable gate arrays,million-point sparse fourier transform,medical imaging,computational biology,real-time processing,real-time systems,indexes,noise,vectors,algorithm design and analysis,computer architecture
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