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Performance of Object Classification Using Zernike Moment

Performance of Object Classification Using Zernike Moment
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摘要 Moments have been used in all sorts of object classification systems based on image. There are lots of moments studied by many researchers in the area of object classification and one of the most preference moments is the Zernike moment. In this paper, the performance of object classification using the Zernike moment has been explored. The classifier based on neural networks has been used in this study. The results indicate the best performance in identifying the aggregate is at 91.4% with a ten orders of the Zernike moment. This encouraging result has shown that the Zernike moment is a suitable moment to be used as a feature of object classification systems. Moments have been used in all sorts of object classification systems based on image. There are lots of moments studied by many researchers in the area of object classification and one of the most preference moments is the Zernike moment. In this paper, the performance of object classification using the Zernike moment has been explored. The classifier based on neural networks has been used in this study. The results indicate the best performance in identifying the aggregate is at 91.4% with a ten orders of the Zernike moment. This encouraging result has shown that the Zernike moment is a suitable moment to be used as a feature of object classification systems.
出处 《Journal of Electronic Science and Technology》 CAS 2014年第1期90-94,共5页 电子科技学刊(英文版)
基金 supported by the Ministry of Higher Education Malaysia under Fundamental Research Grant No.0719
关键词 Features extraction neural network object classification Zernike moment. Features extraction, neural network,object classification, Zernike moment.
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