Abstract:
The recent years had witnessed a resurgence on neural network. Many hidden layers were stacked hierarchically to learn the high-level representations. Great performances ...Show MoreMetadata
Abstract:
The recent years had witnessed a resurgence on neural network. Many hidden layers were stacked hierarchically to learn the high-level representations. Great performances were achieved by the learned representations. However, this kind of learning models were highly dependent on large amounts of signals with label information. In the realistic scenarios, it is very difficult and costly to collect the modulated signals with label information. Given small training samples, the fitting power of deep models were limited. To solve the problems, a new family of signal augmentation strategies, segment-wise generation and signal-wise generation are proposed. The former builds new signal by tuning a single signal, while the latter combines several different modulated signals together to produce new signal. Four kinds of techniques, segment shift in cyclic, segment correlation in random, pairwise signals combination, and multiple signals concatenation are presented. The aim is to simulate the unforeseen disturbances during signal sampling. The recognition performance under the realistic scenarios can be then improved. Multiple comparative studies were performed. The results demonstrated the effectiveness of proposed strategy in comparisons to the classical methods, as well as the deep learning algorithms.
Published in: IEEE Transactions on Communications ( Volume: 71, Issue: 3, March 2023)
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- IEEE Keywords
- Index Terms
- Real Scenarios ,
- Modulation Recognition ,
- Neural Network ,
- Deep Learning ,
- Deep Models ,
- Hidden Layer ,
- Modulation Of Signaling ,
- Recognition Performance ,
- Label Information ,
- Amount Of Signal ,
- High-level Representations ,
- Family Strategies ,
- Deep Neural Network ,
- Input Signal ,
- Recurrent Network ,
- Long Short-term Memory ,
- Classical Features ,
- Results Of Scenario ,
- Recognition Rate ,
- Gated Recurrent Unit ,
- Family Of Methods ,
- Standard Scenario ,
- Extreme Scenarios ,
- Round Of Experiments ,
- Constellation Diagram ,
- Augmented Signaling ,
- Fundamental Network ,
- Extreme Rates ,
- Prototype Model ,
- Cyclic Shift
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Real Scenarios ,
- Modulation Recognition ,
- Neural Network ,
- Deep Learning ,
- Deep Models ,
- Hidden Layer ,
- Modulation Of Signaling ,
- Recognition Performance ,
- Label Information ,
- Amount Of Signal ,
- High-level Representations ,
- Family Strategies ,
- Deep Neural Network ,
- Input Signal ,
- Recurrent Network ,
- Long Short-term Memory ,
- Classical Features ,
- Results Of Scenario ,
- Recognition Rate ,
- Gated Recurrent Unit ,
- Family Of Methods ,
- Standard Scenario ,
- Extreme Scenarios ,
- Round Of Experiments ,
- Constellation Diagram ,
- Augmented Signaling ,
- Fundamental Network ,
- Extreme Rates ,
- Prototype Model ,
- Cyclic Shift
- Author Keywords