DeepSense:通过实时在环深度学习实现快速宽带频谱传感

Daniel Uvaydov, Salvatore D’oro, Francesco Restuccia, T. Melodia
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引用次数: 11

摘要

频谱共享将是解决6ghz以下频段频谱稀缺问题的关键技术。为了公平地访问共享带宽,无线用户必须快速感知大部分频谱,并机会地访问未使用的频段。频谱传感的关键未解决的挑战是:(i)它必须在大带宽上以极低的延迟执行,以检测微小的频谱洞并保证严格的实时数字信号处理(DSP)约束;(ii)其底层算法需要非常准确,并且足够灵活,以便在不同的无线频段和协议下工作,以便在现实环境中找到应用。据我们所知,文献缺乏能够满足这两个要求的频谱传感技术。在本文中,我们提出了DeepSense,这是一种用于实时宽带频谱传感的软件/硬件框架,它依赖于实时深度学习,该框架紧密集成到收发器的基带处理逻辑中,以检测和利用未利用的频谱带。DeepSense使用在无线平台硬件结构中实现的卷积神经网络(CNN)来分析一小部分未处理的基带波形,以最少的I/Q采样自动提取最多的信息。我们广泛地验证了DeepSense的准确性、延迟和一般性性能,包括(i)一个400 GB的数据集,其中包含“在野外”以不同信噪比(SNR)条件和不同天数收集的数十万个WiFi传输;(ii)使用我们自己的软件定义无线电试验台收集的传输数据集;(iii)控制信噪比条件下LTE传输的合成数据集。我们还使用FPGA实现测量了在三个数据集上训练的cnn的实时延迟,并将我们的方法与固定能量阈值机制进行了比较。结果表明,基于学习的方法的准确率和召回率分别达到98%和97%,延迟低至0.61ms。为了再现性和基准测试的目的,我们承诺将本文中使用的代码和数据集共享给社区。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DeepSense: Fast Wideband Spectrum Sensing Through Real-Time In-the-Loop Deep Learning
Spectrum sharing will be a key technology to tackle spectrum scarcity in the sub-6 GHz bands. To fairly access the shared bandwidth, wireless users will necessarily need to quickly sense large portions of spectrum and opportunistically access unutilized bands. The key unaddressed challenges of spectrum sensing are that (i) it has to be performed with extremely low latency over large bandwidths to detect tiny spectrum holes and to guarantee strict real-time digital signal processing (DSP) constraints; (ii) its underlying algorithms need to be extremely accurate, and flexible enough to work with different wireless bands and protocols to find application in real-world settings. To the best of our knowledge, the literature lacks spectrum sensing techniques able to accomplish both requirements. In this paper, we propose DeepSense, a software/hardware framework for real-time wideband spectrum sensing that relies on real-time deep learning tightly integrated into the transceiver’s baseband processing logic to detect and exploit unutilized spectrum bands. DeepSense uses a convolutional neural network (CNN) implemented in the wireless platform’s hardware fabric to analyze a small portion of the unprocessed baseband waveform to automatically extract the maximum amount of information with the least amount of I/Q samples. We extensively validate the accuracy, latency and generality performance of DeepSense with (i) a 400 GB dataset containing hundreds of thousands of WiFi transmissions collected "in the wild" with different Signal-to-Noise-Ratio (SNR) conditions and over different days; (ii) a dataset of transmissions collected using our own software-defined radio testbed; and (iii) a synthetic dataset of LTE transmissions under controlled SNR conditions. We also measure the real-time latency of the CNNs trained on the three datasets with an FPGA implementation, and compare our approach with a fixed energy threshold mechanism. Results show that our learning-based approach can deliver a precision and recall of 98% and 97% respectively and a latency as low as 0.61ms. For reproducibility and benchmarking purposes, we pledge to share the code and the datasets used in this paper to the community.
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