论文标题

通过多标签分类来检测源检测

Source detection via multi-label classification

论文作者

Vijayamohanan, Jayakrishnan, Gupta, Arjun, Noakoasteen, Oameed, Goudos, Sotirios, Christodoulou, Christos

论文摘要

当试图在较低的SINR和较少数量快照的情况下,试图解决大量来源时,通过常规算法进行无线电源检测一直是不可靠的。我们通过将源检测重新提出为使用深度学习框架解决的多类分类问题来解决这一问题。使用具有全体方向元件的中心对称线性阵列对传入的波形进行采样,并提取了自相关矩阵的归一化上三角形,作为用于修改的卷积神经网络的输入功能,该功能具有带有Uni-dimensional iNDEMENSION滤波器的验证,并训练有素,可以在存在的情况下检测源,并在存在的情况下均具有无与伦比的证明。引入了两种检测算法,并称为CNNDETECTOR和RADIONET,随后针对常规的源检测算法进行了标准。通过将前向后的空间平滑度中包括预处理,Radionet还可以在存在相关路径的情况下解决不相关源的数量。最后,算法是在具有挑战性的操作条件下对应力测试的,并提出了广泛的评估,显示了引入的预测模型的功效和贡献。

Radio source detection through conventional algorithms has been unreliable when trying to solve for large number of sources in the presence of low SINR and less number of snapshots. We address this by reformulating source detection as a multi-class classification problem solved using deep learning frameworks. Incoming waveforms are sampled using a centrosymmetric linear array with omni-directional elements and the normalized upper triangle of the autocorrelation matrix is extracted as the input feature to a modified convolutional neural network with uni-dimensional filters, trained to detect the sources in the presence of both uncorrelated and correlated signals. Two detection algorithms are introduced and referred to as CNNDetector and RadioNet, and subsequently benchmarked against the conventional source detection algorithms. By including preprocessing in forward backward spatial smoothing, RadioNet can also resolve the number of uncorrelated sources in the presence of correlated paths. Finally, the algorithms are stress tested under challenging operational conditions and extensive evaluations are presented showing the efficacy and contributions of the introduced predictive models.

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