Abstract

Machine learning becomes increasingly promising in specific emitter identification (SEI), particularly in feature extraction and target recognition. Traditional features, such as radio frequency (RF), pulse amplitude (PA), power spectral density (PSD), and etc., usually show limited recognition effects when only a slight difference exists in radar signals. Numerous two-dimensional features on transform domain, like various time-frequency representation and ambiguity function are used to augment information abundance, whereas the unacceptable computational burden usually emerges. To solve this problem, some artfully handcrafted features in transformed domain are proposed, like representative slice of ambiguity function (AF-RS) and compressed sensing mask (CS-MASK), to extract representative information that contributes to machine recognition task. However, most handcrafted features only utilizing neural network as a classifier, few of them focus on mining deep informative features from the perspective of machine cognition. Such feature extraction that is based on human cognition instead of machine cognition may probably miss some seemingly nominal texture information which actually contributes greatly to recognition, or collect too much redundant information. In this paper, a novel data-driven feature extraction is proposed based on machine cognition (MC-Feature) resort to saliency detection. Saliency detection exhibits positive contributions and suppresses irrelevant contributions in a transform domain with the help of a saliency map calculated from the accumulated gradients of each neuron to input data. Finally, positive and irrelevant contributions in the saliency map are merged into a new feature. Numerous experimental results demonstrate that the MC-feature can greatly strengthen the slight intra-class difference in SEI and provides a possibility of interpretation of CNN.

Highlights

  • Feature extraction is an important part in specific emitter identification (SEI), but it is more than challenging because in modern complex electromagnetic environment, it is no longer enough to accomplish SEI tasks only relying on some primitive properties of radar signals, like radio frequency (RF), pulse amplitude (PA), pulse width (PW), power spectral density (PSD), and etc. [1,2,3,4]

  • It is clear that the divergence of other three features of two different class signals is not very apparent, while the divergence of the proposed method can even be distinguished by eyes

  • We propose a novel SEI feature from perspective of machine cognition instead of human cognition

Read more

Summary

Introduction

Feature extraction is an important part in specific emitter identification (SEI), but it is more than challenging because in modern complex electromagnetic environment, it is no longer enough to accomplish SEI tasks only relying on some primitive properties of radar signals, like radio frequency (RF), pulse amplitude (PA), pulse width (PW), power spectral density (PSD), and etc. [1,2,3,4]. Various two dimensional (2D) transform features, like short time Fourier transform (STFT), Wavelet transform (WT), S transform (ST), Winger-Ville distribution (WVD), ambiguity function (AF), and etc., are used as feature input to classifier in order to represent more comprehensive information in a feature They can achieve good results, the information representation capacity of a transformed feature and its data dimensionality are always a pair of paradox. MC-feature has extraordinary representative capability of intra-class fingerprint information of signals in SEI This superiority is due to the understanding of the process of feature extraction in machine rather than the complex manipulation on 2D features, which avoids the difficulty of selecting the optimal parameters in AF-RS and CS-MASK. These features can be divided into primitive 2D transformation features and handcrafted 2D transform features, which are introduced in Section 2.1 and Section 2.2, respectively

Primitive Transform Domain Feature
Short Time Fourier Transform
Ambiguity Function
Handcrafted Transform Domain Feature
Representative Slice of Ambiguity Function
Compressed Sensing Mask
MC-Feature
Image-Specific Class Saliency Visualisation
Saliency Map
Experimental Results
Data Information
Recognition CNN Structure
Results Analysis
Conclusions
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call