Abstract
Deep learning-based classification algorithms have been used for
automatic modulation recognition (AMR). However, most methods only focus
on end-to-end mapping and neglect the classic key features. In this
paper, signals are enforced with key classification features to propose
a novel deep learning model for AMR by learning the shared latent space
of the aligned signals and key features (LLAF); this is done to increase
the generalizability of the model and to ensure the physical
plausibility of the results. To obtain adequate signal representations,
an encoder-decoder architecture is proposed to learn the shared latent
space, and the architecture is trained to approximate prior label
distributions for precise signal classification. Simulation results
verify the high recognition accuracy of the proposed LLAF model under
different signal-to-noise ratios (SNRs).