The Classification of Roughness fir Machined Surface Image using Neural Network

신경회로망을 이용한 가공면 영상의 거칠기 분류

  • Published : 2000.04.01

Abstract

Surface roughness is one of the most important parameters to estimate quality of products. As this reason so many studies were car-ried out through various attempts that were contact or non-contact using computer vision. Even through these efforts there were few good results in this research., however texture analysis making a important role to solve these problems in various fields including universe aviation living thing and fibers. In this study feature value of co-occurrence matrix was calculated by statistic method and roughness value of worked surface was classified, of it. Experiment was carried out using input vector of neural network with characteristic value of texture calculated from worked surface image. It's found that recognition rate of 74% was obtained when adapting texture features. In order to enhance recogni-tion rate combination type in characteristics value of texture was changed into input vector. As a result high recognition rate of 92.6% was obtained through these processes.

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References

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  6. 한국공작기계학회 춘계학술대회 논문집 광 강도변화를 이용한 가공면 영상의 텍스쳐 특징 분석 사승윤;이명재;김광래;유봉환