Publication | Open Access
Competitive Deep-Belief Networks for Underwater Acoustic Target Recognition
92
Citations
12
References
2018
Year
Convolutional Neural NetworkCompetitive TrainingMachine LearningEngineeringUnderwater SystemUnderwater Acoustic CommunicationAutoencodersUnderwater AcousticSpeech RecognitionImage AnalysisData SciencePattern RecognitionCompetitive Deep-belief NetworkCompetitive Deep-belief NetworksFeature LearningComputer ScienceDeep LearningDeep Neural NetworkDeep Neural NetworksClassifier System
Underwater acoustic target recognition based on ship-radiated noise belongs to the small-sample-size recognition problems. A competitive deep-belief network is proposed to learn features with more discriminative information from labeled and unlabeled samples. The proposed model consists of four stages: (1) A standard restricted Boltzmann machine is pretrained using a large number of unlabeled data to initialize its parameters; (2) the hidden units are grouped according to categories, which provides an initial clustering model for competitive learning; (3) competitive training and back-propagation algorithms are used to update the parameters to accomplish the task of clustering; (4) by applying layer-wise training and supervised fine-tuning, a deep neural network is built to obtain features. Experimental results show that the proposed method can achieve classification accuracy of 90.89%, which is 8.95% higher than the accuracy obtained by the compared methods. In addition, the highest accuracy of our method is obtained with fewer features than other methods.
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