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Modelling of a steel ball's grade based on image texture features

机译:基于图像纹理特征的钢球等级建模

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摘要

The quality of steel balls has a substantial influence on bearing performance. The conventional way of measuring steel balls is by examining randomly selected specimens owing to the lack of efficient test methods. However, this cannot guarantee that every individual ball meets a certain standard. The traditional measurement is not acceptable in those fields where stability and reliability are highly demanded. An automatic method to measure a steel ball's quality to make exhaustive examination feasible and efficient was investigated. This paper describes the prediction model of a steel ball's vibration level based on image texture features by regression analysis method. The model establishes the relationship between the surface microscopic image of a steel ball and its vibration level, which is the major criterion to judge the quality of a steel ball. Experimental results have demonstrated that the prediction model approximates the real vibration level very closely. Several fitting models have been tested and a non-linear quadratic prediction model gives rise to the highest fitting precision.
机译:钢球的质量对轴承性能有很大影响。由于缺乏有效的测试方法,测量钢球的常规方法是检查随机选择的试样。但是,这不能保证每个球都符合特定的标准。在对稳定性和可靠性有很高要求的领域,传统测量是不可接受的。研究了一种自动测量钢球质量以使穷举检查可行且有效的方法。通过回归分析方法,基于图像纹理特征,描述了钢球振动水平的预测模型。该模型建立了钢球表面显微图像与其振动水平之间的关系,这是判断钢球质量的主要标准。实验结果表明,该预测模型非常接近实际振动水平。已经测试了几种拟合模型,并且非线性二次预测模型产生了最高的拟合精度。

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