基于图像处理烟丝宽度测定方法国际标准的比对研究
Standard Science(2021)
Abstract
本文介绍了国内8家实验室研究基于图像处理的烟丝宽度测量方法及ISO 20193:2019的精密度及检测效率.结果表明:(1)基于图像处理的烟丝宽度测量方法得到的精密度与ISO 20193:2019处于同一数量级,重复性标准差(S r)与烟丝宽度的比值小于5%,再现性标准差(S R)与烟丝宽度的比值小于8%;(2)基于图像处理的烟丝宽度测量方法比ISO 20193:2019的检测效率高.
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