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Deep Learning at the Edge: Automatic Modulation Classification on Real World Signals

机译:深度学习在边缘:现实世界信号自动调制分类

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In this paper, we present an end-to-end pipeline for deep learning applied to Automatic Modulation Classification (AMC). We begin by utilizing Modulation Classification Network (MCNET), a recently published cost-efficient convolutional neural network (CNX) with skip connections. Model efficacy is confirmed and the algorithm is advanced with hyper parameter and regularization adjustments, transfer learned with an augmented over-the-air data set, and then a computationally superior version is deployed to an edge device. The model is initially trained with the well-known 2018 DEEPSIG data set that includes 24 modulation schemes. Transfer learning utilizes the Experiments, Scenarios, Concept of Operations, and Prototype Engineering (ESCAPE) data set. The edge node device utilized, but is not limited to, an NVIDIA Jetson AGX XAVIER. Under ideal conditions, classification at the edge node resulted in 96% accuracy with 11 over-the-air modulation schemes. Inferences at the edge were up to 13 times faster than the non-optimized model.
机译:在本文中,我们介绍了一个用于深度学习的端到端管道,适用于自动调制分类(AMC)。我们首先利用调制分类网络(MCNET),最近发布的具有跳过连接的经济高效的卷积神经网络(CNX)。确认模型功效,并且算法具有超参数和正则化调整,使用增强的超空气数据集进行学习,然后将计算上卓越的版本部署到边缘设备。该模型最初是用包括24个调制方案的众所周知的2018深度数据集培训。转移学习利用实验,场景,操作概念和原型工程(逃生)数据集。利用边缘节点设备,但不限于NVIDIA Jetson Agx Xavier。在理想条件下,边缘节点的分类导致96%的精度,具有11个空气的调制方案。边缘的推论速度比未优化的模型快13倍。

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