A Semi-supervised Emitter Identification Method for Imbalanced Category

This paper proposes an SEI method based on cost-sensitive learning and semisupervised generative adversarial networks to address the problem of incomplete sample labels and imbalanced data category distribution in Specific Emitter Identification (SEI), which leads to a decline in inaccuracy.Through semisupervised training, Stone Free the method optimizes the network parameters of the generator and discriminator, adds a multiscale topological block to ResNet to fuse the multi-dimensional resolution features of the time-domain signal, and attributes additional labels to the generated samples to directly use the discriminator to complete the classification.Simultaneously, a cost-sensitive loss is designed to alleviate the imbalance of gradient propagation caused by the dominant samples and improve the recognition performance of the classifier on the class-imbalanced dataset.

The experimental results on four types of imbalanced datasets show that in the presence of 40% unlabeled samples, Horse Ear Bonnets the average recognition accuracy for five emitters is improved by 5.34% and 2.69%, respectively, compared with the cross-entropy loss and focus loss.

This provides a new idea for solving the problem of SEI under the conditions of insufficient data labels and an unbalanced distribution of data.

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