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Viterbi Detection for Compressively Sampled FHSS-GFSK Signals

机译:压缩采样的FHSS-GFSK信号的维特比检测

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This paper proposes a sequence detector designed to retrieve data bits from compressively sampled frequency-hopping spread spectrum (FHSS) Gaussian frequency-shift keying (GFSK) signals. The received signal waveform is not reconstructed from the compressive measurements, nor are received bits detected on a symbol-by-symbol basis. Rather, the entire sequence of transmitted symbols is detected from the entire sequence of compressive measurements. Another novel aspect of the work is that a non-cooperative scenario is assumed. Specifically, the receiver is assumed to have no prior knowledge of the specific spread spectrum hopping sequence used by the transmitter. The most significant contribution of the work is the design of adaptive sampling kernels that exploit the structure of an FHSS-GFSK signal to obtain significant performance improvements over random-kernel sampling. The resulting system can automatically choose an appropriate compression ratio as a function of the signal-to-noise ratio (SNR) without explicit knowledge of the SNR. Additionally, the noise folding problem present in random-kernel sampling is greatly alleviated by use of the adaptive sampling kernels. Compared with Nyquist sampling, adaptive compressive sampling offers compression ratios ranging from 20 to 32, depending on the SNR while suffering less than 1 dB loss in the resulting bit error rate.
机译:本文提出了一种序列检测器,该序列检测器旨在从压缩采样的跳频扩频(FHSS)高斯频移键控(GFSK)信号中检索数据位。接收信号波形既不是从压缩测量中重建的,也不是在逐个符号的基础上检测到接收到的比特。而是,从压缩测量的整个序列中检测发射符号的整个序列。这项工作的另一个新颖之处是假设了一种非合作的情况。具体地,假定接收机不具有发射机所使用的特定扩频跳变序列的先验知识。这项工作最重要的贡献是设计了自适应采样内核,该内核利用FHSS-GFSK信号的结构来获得比随机内核采样更大的性能提升。所得系统可以根据信噪比(SNR)自动选择合适的压缩率,而无需明确了解SNR。另外,通过使用自适应采样内核,极大地缓解了随机内核采样中存在的噪声折叠问题。与Nyquist采样相比,自适应压缩采样提供的压缩比范围为20至32,具体取决于SNR,而所产生的误码率损失小于1 dB。

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