One-dimensional deep convolution network underwater multi-target recognition method

A deep convolution and recognition method technology, applied in the field of pattern recognition, to achieve good generalization ability, fast network training, and improve the effect of recognition accuracy

Inactive Publication Date: 2017-05-17
HARBIN ENG UNIV
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Problems solved by technology

[0003] At present, the research in the field of underwater multi-target recognition is based on traditional methods, and the use of deep learning is mainly conce

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  • One-dimensional deep convolution network underwater multi-target recognition method
  • One-dimensional deep convolution network underwater multi-target recognition method
  • One-dimensional deep convolution network underwater multi-target recognition method

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Embodiment Construction

[0028] The present invention will be described in detail below in conjunction with examples.

[0029] The experimental environment of the present invention is a 64-bit win7 operating system, 64GB internal memory, 24-core CPU, and K40GPU of NVIDIA Corporation. The software tools are MATLAB 2015, VS 2013, CUDA 6.5. In the feature extraction process, configure the parameters of each layer of the neural network on MATLAB, and compile the network training, network forward propagation and other files written in C++ into MATLAB executable files to realize network training. The feature extraction of the sound signal is input to the classifier for classification and recognition. During the experiment, CUDA is used for GPU parallel acceleration operation.

[0030] 1. Pre-emphasis of the sound signal

[0031] The collected data set is the measured civil ship data set. In this data set, there are three types of civil ships of different types: small boats, large ships, and Bohai ferries...

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Abstract

The invention provides a one-dimensional deep convolution network underwater multi-target recognition method. A 6dB/frequency doubling one-order digital filter is adopted to enhance a high-frequency part to enable a signal spectrum to be flattened; a window function is selected to intercept signals, and signals with the duration of 170 ms are acquired as the best input frame length for a convolutional neural network; the one-dimensional deep convolution network is adopted to carry out feature extraction on sound signals; a training sample set is used for learning the convolution network to obtain network structure parameters with the best features; and an extreme learning machine is selected to carry out classification and recognition on output features of the convolution network. the deep convolution network in the deep learning is used for carrying out feature extraction on the sound signals, the traditional manual feature extraction is replaced, the automatically-extracted sound features contain richer recognition information, the extreme learning machine is used for carrying out classification and recognition on features automatically extracted by the convolution network, features different from those obtained in the traditional manual analysis mode can be effectively found out, and the underwater sound signal recognition rate is improved.

Description

technical field [0001] The invention relates to a pattern recognition method, in particular to a feature extraction and multi-object classification recognition method of underwater sound signals. Background technique [0002] Acoustic signals are the main form of energy that can be transmitted over long distances underwater, and sonar is also the most effective means of underwater detection. The classification and identification of underwater acoustic signals is the focus of underwater acoustic signal research, and the development of underwater acoustic identification has experienced the development of automatic identification of underwater targets from the most traditional sonar personnel. The research on underwater sound signals first started in developed western countries. Although our country started late in the field of underwater sound recognition, some breakthroughs have been made through the efforts of scientific researchers. Mainly through the time-frequency conve...

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Application Information

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IPC IPC(8): G06K9/00G06N3/04G06N99/00
CPCG06N20/00G06N3/045G06F2218/00
Inventor 王科俊卢安安邢向磊
Owner HARBIN ENG UNIV
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