Study on the Construction of 3-Dimensional Image by Support Vector Machine

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Abstract:

The construction of object 3-dimensional image is the thinking base of machine learning, it is important to machine recognize the outside world. The current algorithms of object 3-dimensional image construction are mainly based on the least squares method (LSM) in linear or nonlinear models, all of them existed some defects and deficiencies. The paper introduced the construction principle of 3-dimensional image by support vector machine, then the algorithm and step was put forward, as well as the key code in the Matlab7.4.

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907-911

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January 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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