Recognition method, based on deep belief network, of three-dimensional SAR images

A deep belief network and three-dimensional technology, applied in three-dimensional object recognition, neural learning methods, character and pattern recognition, etc., can solve the problems of unreachable parameter setting and low efficiency of parameter setting methods

Active Publication Date: 2017-01-25
UNIV OF ELECTRONICS SCI & TECH OF CHINA
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Problems solved by technology

And, on the recognition method, the present invention proposes the fusion cross-validation method to improve the deep confidence network so that it can automatically adjust the parameters and realize the self-optimization of the parameters. The advantages of this method are: 1) solve the problem of manual parameter setting The method is inefficient, and often fails to achieve the optimal parameter setting; 2) Using the cross-validation method can obtain a higher accuracy rate, and can effectively avoid the occurrence of over-fitting learning and under-fitting learning states; 3) The optimized parameters can accurately learn the advanced characteristics of the sample data, enabling the deep belief network to obtain better recognition results

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  • Recognition method, based on deep belief network, of three-dimensional SAR images
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  • Recognition method, based on deep belief network, of three-dimensional SAR images

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Embodiment Construction

[0127] The present invention mainly adopts the method of simulation experiment to verify, and all steps and conclusions are verified correctly on Matlab 2013a. The specific implementation steps are as follows:

[0128] Step 1. Select the array 3D SAR system parameters required for simulation:

[0129] Select the array 3D SAR system parameters, including: light propagation speed in air C=3×10 8 m / s; frequency sampling points N r =100; the form of the baseband signal transmitted by the radar is a step frequency signal, and the starting frequency of the signal is f 0 =1GHz, step frequency increment Δf=20MHz, sub-pulse frequency f i =f 0 +i·Δf=1e 9 +i 20e 6 (Hz), i is the sub-pulse sequence number, i=1,2,3,...,100; the signal bandwidth B=(N r -1) Δf = 1.98GHz; radar working center frequency f c =f 0 +B / 2=1.99GHz; choose 41×41 evenly arranged array antennas, the array length and width are 4m×4m, the antenna interval is 0.1m, and the receiving array center The position ve...

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Abstract

The invention provides a recognition method, based on deep belief network, of three-dimensional SAR images. The method comprises the following steps: firstly establishing a simulation sample bank of the three-dimensional SAR images, performing projection to different azimuthal angles and pitch angles through one or a small quantity of objective three-dimensional SAR images, so as to obtain a plurality of two-dimensional SAR images, ensuring that the small quantity of obtained three-dimensional SAR images are converted into two-dimensional images, and performing recognition through a two-dimensional image recognition method, and the method can greatly reduce the cost, and reduce the time for acquiring SAR imaging. According to the method, a splicing crossover verification method is proposed, and the deep belief network is improved, so that the deep belief network can automatically adjust parameters, self optimization of parameters is realized, the occurrence of over-fitting learning state and under-fitting learning state is effectively avoided, advance features of sample data can be accurately learnt, a better recognition result is obtained for the deep belief network, the complexity of manual setting of parameters is eliminated, and the recognition efficiency is improved.

Description

Technical field: [0001] The technical invention belongs to the technical field of radar, and in particular relates to the technical field of synthetic aperture radar (SAR) imaging. Background technique: [0002] Synthetic Aperture Radar (SAR) can detect and monitor the target area of ​​interest all-weather and all-weather without being restricted by natural conditions, and has been widely used in both civil and military fields. [0003] SAR image target recognition is the application of pattern recognition and artificial intelligence in SAR system, and its process can be divided into training sample stage and test sample stage. In the training phase, the SAR image of the training target is preprocessed first, including denoising, segmentation, contrast enhancement, etc., and then the stable and distinctive features of the target in the SAR image are extracted, and meaningful features are found from them. These features are used to design target recognition classifiers; in t...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/00G06K9/62G06N3/08
CPCG06N3/08G06V20/647G06F18/214
Inventor 张晓玲蒲羚周灵杰范小天韦顺军徐三元
Owner UNIV OF ELECTRONICS SCI & TECH OF CHINA
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