Fine-Grained Recognition of Mixed Signals with Geometry Coordinate Attention

Author:

Yi Qingwu12,Wang Qing2,Zhang Jianwu3,Zheng Xiaoran3,Lu Zetao3

Affiliation:

1. National Key Laboratory of Radar Signal Processing, Xidian University, Xi’an 710071, China

2. State Key Laboratory of Satellite Navigation System and Equipment Technology, The 54th Research Institute of CETC, Shijiazhuang 050081, China

3. School of Communication Engineering, Hangzhou Dianzi University, Hangzhou 310018, China

Abstract

With the advancement of technology, signal modulation types are becoming increasingly diverse and complex. The phenomenon of signal time–frequency overlap during transmission poses significant challenges for the classification and recognition of mixed signals, including poor recognition capabilities and low generality. This paper presents a recognition model for the fine-grained analysis of mixed signal characteristics, proposing a Geometry Coordinate Attention mechanism and introducing a low-rank bilinear pooling module to more effectively extract signal features for classification. The model employs a residual neural network as its backbone architecture and utilizes the Geometry Coordinate Attention mechanism for time–frequency weighted analysis based on information geometry theory. This analysis targets multiple-scale features within the architecture, producing time–frequency weighted features of the signal. These weighted features are further analyzed through a low-rank bilinear pooling module, combined with the backbone features, to achieve fine-grained feature fusion. This results in a fused feature vector for mixed signal classification. Experiments were conducted on a simulated dataset comprising 39,600 mixed-signal time–frequency plots. The model was benchmarked against a baseline using a residual neural network. The experimental outcomes demonstrated an improvement of 9% in the exact match ratio and 5% in the Hamming score. These results indicate that the proposed model significantly enhances the recognition capability and generalizability of mixed signal classification.

Funder

National Key Research and Development Program of China

Publisher

MDPI AG

Reference21 articles.

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