Abstract

Deep learning has recently been applied to automatically classify the modulation categories of received radio signals without manual experience. However, training deep learning models requires massive volume of data. An insufficient training data will cause serious overfitting problem and degrade the classification accuracy. To cope with small dataset, data augmentation has been widely used in image processing to expand the dataset and improve the robustness of deep learning models. However, in wireless communication areas, the effect of different data augmentation methods on radio modulation classification has not been studied yet. In this paper, we evaluate different data augmentation methods via a state-of-the-art deep learning-based modulation classifier. Based on the characteristics of modulated signals, three augmentation methods are considered, i.e., rotation, flip, and Gaussian noise, which can be applied in both training phase and inference phase of the deep learning algorithm. Numerical results show that all three augmentation methods can improve the classification accuracy. Among which, the rotation augmentation method outperforms the flip method, both of which achieve higher classification accuracy than the Gaussian noise method. Given only 12.5% of training dataset, a joint rotation and flip augmentation policy can achieve even higher classification accuracy than the baseline with initial 100% training dataset without augmentation. Furthermore, with data augmentation, radio modulation categories can be successfully classified using shorter radio samples, leading to a simplified deep learning model and shorter the classification response time.

Highlights

  • Benefiting from the improvement of computing power and big data, deep learning has achieved unprecedented development in many applications, i.e., speech and audio processing [1], natural language processing [2], object detection [3], and so on

  • Given only 12.5% of training dataset, the joint augmentation method expands the dataset to be a size of 75% of the initial dataset and achieves an even higher classification accuracy than the baseline with 100% training dataset without augmentation

  • PRELIMINARIES we introduce the radio signal dataset and the architecture of the state-of-the-art Long Short-Term Memory (LSTM) model [32], which will be used to evaluate different data augmentation methods presented in Sec

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Summary

INTRODUCTION

Benefiting from the improvement of computing power and big data, deep learning has achieved unprecedented development in many applications, i.e., speech and audio processing [1], natural language processing [2], object detection [3], and so on. Both rotation and flip augmentation methods achieve similar accuracy improvements for image classification [22], [23], it is an open question about which one is preferred for radio modulation classification. Can all these three augmentation methods improve the classification accuracy for deep learning-based radio modulation classification?

DATA AUGMENTATION METHODS
TEST-TIME AUGMENTATION
TRAIN-TEST-TIME AUGMENTATION
DATA AUGMENTATION TIME
AUGMENTATION PERFORMANCE
Findings
CONCLUSION
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