IEEE Globecom | Xu T, Darwazeh I | Non-cooperative communications using non-orthogonal multicarrier signals are challenging since self-created inter carrier interference (ICI) prevents successful s...
Wavelet Classification for Non-Cooperative Non-Orthogonal Signal Communications
Abstract
Non-cooperative communications using non-orthogonal multicarrier signals are challenging since self-created inter carrier interference (ICI) prevents successful signal classification. Deep learning (DL) can deal with the classification task without domain-knowledge at the cost of training complexity. Previous work showed that a tremendously trained convolutional neural network (CNN) classifier can efficiently identify feature-diversity dominant signals while it fails when feature-similarity dominates. Therefore, a pre-processing strategy, which can amplify signal feature diversity is of great importance. This work applies single-level wavelet transform to manually extract time-frequency features from non-orthogonal signals.
Composite statistical features are investigated and the wavelet enabled two-dimensional time-frequency feature grid is further simplified into a one-dimensional feature vector via proper statistical transform. The dimensionality reduced features are fed to an error-correcting output codes (ECOC) model, consisting of multiple binary support vector machine (SVM) learners, for multiclass signal classification. Low-cost experiments reveal 100% classification accuracy for feature-diversity dominant signals and 90% for feature-similarity dominant signals, which is nearly 28% accuracy improvement when compared with the CNN classification results.
Publication Type: | Conference |
---|
Authors: | Xu T, Darwazeh I |
---|
Publisher: | IEEE |
---|
Publication date: | 05/03/2021 |
---|
Published Proceedings: | 2020 IEEE Globecom Workshops, GC Wkshps 2020 - Proceedings |
---|
ISBN-13: | 9781728173078 |
---|
Conference start date: | 07/12/2021 |
---|
Conference end date: | 11/12/2021 |
---|
Conference location: | Taipei, Taiwan |
---|
Name of conference: | 2020 IEEE Globecom Workshops (GC Wkshps 2020) |
---|
Status: | Published |
---|
Print ISSN: | 2166-0069 |
---|
DOI: | http://dx.doi.org/10.1109/GCWkshps50303.2020.9367556 |
---|
Explore how UCL research is advancing the future technologies of a connected world: