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基于分形理论的木材纹理特征研究 被引量:15

A Study on the Wood Texture Character Based on Fractal Theory
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摘要 介绍了一种利用自相关函数来估算图像分形维数的方法,并将其应用到木材的纹理分类检测中。实验表明,分形维数值直接反映了木材纹理的粗糙程度,可定性地作为描述木材纹理粗糙度的一种度量。 This paper introduced a method availing autocorrelation functions to estimate the image fractal dimension, and the method can detect classification of the wood texture. The experiment showed that fractal dimension values reflect directly roughness of the wood texture, and fractal dimension values can be used to classify the wood roughness accuracy.
出处 《林业机械与木工设备》 2005年第7期19-20,共2页 Forestry Machinery & Woodworking Equipment
关键词 自相关函数 分形维数 木材纹理特征 粗糙程度 分形理论 autocorrelation functions fractal dimension the wood texture roughness
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