Enhancing Automatic Modulation Recognition through Robust Global Feature
Extraction
- URL: http://arxiv.org/abs/2401.01056v1
- Date: Tue, 2 Jan 2024 06:31:24 GMT
- Title: Enhancing Automatic Modulation Recognition through Robust Global Feature
Extraction
- Authors: Yunpeng Qu, Zhilin Lu, Rui Zeng, Jintao Wang and Jian Wang
- Abstract summary: Modulated signals exhibit long temporal dependencies.
Human experts analyze patterns in constellation diagrams to classify modulation schemes.
Classical convolutional-based networks excel at extracting local features but struggle to capture global relationships.
- Score: 12.868218616042292
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Automatic Modulation Recognition (AMR) plays a crucial role in wireless
communication systems. Deep learning AMR strategies have achieved tremendous
success in recent years. Modulated signals exhibit long temporal dependencies,
and extracting global features is crucial in identifying modulation schemes.
Traditionally, human experts analyze patterns in constellation diagrams to
classify modulation schemes. Classical convolutional-based networks, due to
their limited receptive fields, excel at extracting local features but struggle
to capture global relationships. To address this limitation, we introduce a
novel hybrid deep framework named TLDNN, which incorporates the architectures
of the transformer and long short-term memory (LSTM). We utilize the
self-attention mechanism of the transformer to model the global correlations in
signal sequences while employing LSTM to enhance the capture of temporal
dependencies. To mitigate the impact like RF fingerprint features and channel
characteristics on model generalization, we propose data augmentation
strategies known as segment substitution (SS) to enhance the model's robustness
to modulation-related features. Experimental results on widely-used datasets
demonstrate that our method achieves state-of-the-art performance and exhibits
significant advantages in terms of complexity. Our proposed framework serves as
a foundational backbone that can be extended to different datasets. We have
verified the effectiveness of our augmentation approach in enhancing the
generalization of the models, particularly in few-shot scenarios. Code is
available at \url{https://github.com/AMR-Master/TLDNN}.
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