Insulator Species Recognition Based on Difference Features of the Color Image

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Abstract:

This paper proposed a new method of feature description for insulator species recognition. A method of calculating the difference was defined. The three component value matrixes of an image in HSI space were converted to difference value matrixes successively. Then the difference value, shape and angle features of each region and each color were described. Experiments showed that the proposed method can be applied to describe the actual aerial images, and achieved the recognition of insulator species.

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441-445

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September 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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