HYBRID TEXTURE IDENTIFICATION METHOD

Natalya Volkova, V. Krylov
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引用次数: 1

Abstract

The importance of the modeling mode in systems of computer visual pattern recognition is shown. The purpose of the mode is to determine the types of textures that are present on the images processed in intelligent diagnostic systems. Images processed in technical diagnostic systems contain texture regions, which can be represented by different types of textures - spectral, statistical and spectral-statistical. Texture identification methods, such as, statistical, spectral, expert, multifractal, which are used to identify and analyze texture images, have been analyzed. To determine texture regions on images that are of a combined spectral-statistical nature, a hybrid texture identification method has been developed which makes it possible to take into account the local characteristics of the texture based on multifractal indicators characterizing the non-stationarity and impulsite of the data and the sign of the spectral texture. The stages of the developed hybrid texture identification method are: preprocessing; formation of the primary features vector; formation of the secondary features vector. The formation of the primary features vector is performed for the selected rectangular fragment of the image, in which the multifractal features and the spectral texture feature are calculated. To reduce the feature space at the stage of formation of the secondary identification vector, the principal component method was used. An experimental study of the developed hybrid texture identification method textures on model images of spectral, statistical, spectralstatistical textures has been carried out. The results of the study showed that the developed method made it possible to increase the probability of correct determination of the region of the combined spectral-statistical texture. The developed identification method was tested on images from Brodatz album of textures and images of wear zones of cutting tools, which are processed in intelligent systems of technical diagnostics. The probability of correctly identifying areas of spectral-statistical texture in the images of wear zones of cutting tools averaged 0.9, which is sufficient for the needs of practice
混合纹理识别方法
说明了建模模式在计算机视觉模式识别系统中的重要性。该模式的目的是确定在智能诊断系统中处理的图像上存在的纹理类型。在技术诊断系统中处理的图像包含纹理区域,这些纹理区域可以由不同类型的纹理表示-光谱,统计和光谱统计。分析了用于纹理图像识别和分析的统计、光谱、专家、多重分形等纹理识别方法。为了确定具有光谱-统计组合性质的图像上的纹理区域,提出了一种混合纹理识别方法,该方法可以基于表征数据的非平稳性和冲动性以及光谱纹理符号的多重分形指标来考虑纹理的局部特征。所开发的混合纹理识别方法分为以下几个阶段:预处理;主要特征向量的形成;二级特征向量的形成。选取图像的矩形碎片进行初级特征向量的形成,计算多重分形特征和光谱纹理特征。为了减少二次识别向量形成阶段的特征空间,采用了主成分法。对所开发的混合纹理识别方法在光谱、统计、光谱统计纹理模型图像上进行了实验研究。研究结果表明,该方法可以提高光谱-统计复合纹理区域的正确确定概率。在智能技术诊断系统中对Brodatz纹理图集图像和刀具磨损区图像进行了验证。在刀具磨损区图像中正确识别光谱统计纹理区域的概率平均为0.9,足以满足实践的需要
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