School of Pharmacy and Applied Science, La Trobe Institute of Molecular Sciences, La Trobe University, Edwards Rd, Bendigo 3550, Australia.
Mar Drugs. 2012 Jul;10(7):1459-1475. doi: 10.3390/md10071459. Epub 2012 Jul 10.
Assessing the quality of pearls involves the use of various tools and methods, which are mainly visual and often quite subjective. Pearls are normally classified by origin and are then graded by luster, nacre thickness, surface quality, size, color and shape. The aim of this study was to investigate the capacity of Artificial Neural Networks (ANNs) to classify and estimate the quality of 27 different pearls from their UV-Visible spectra. Due to the opaque nature of pearls, spectroscopy measurements were performed using the Diffuse Reflectance UV-Visible spectroscopy technique. The spectra were acquired at two different locations on each pearl sample in order to assess surface homogeneity. The spectral data (inputs) were smoothed to reduce the noise, fed into ANNs and correlated to the pearl's quality/grading criteria (outputs). The developed ANNs were successful in predicting pearl type, mollusk growing species, possible luster and color enhancing, donor condition/type, recipient/host color, donor color, pearl luster, pearl color, origin. The results of this study shows that the developed UV-Vis spectroscopy-ANN method could be used as a more objective method of assessing pearl quality (grading) and may become a valuable tool for the pearl grading industry.
评估珍珠的质量涉及使用各种工具和方法,主要是视觉方法,而且通常相当主观。珍珠通常按产地分类,然后根据光泽度、珍珠层厚度、表面质量、大小、颜色和形状进行分级。本研究旨在探讨人工神经网络 (ANNs) 对 27 种不同珍珠的分类和质量评估能力,这些珍珠的 UV-可见光谱。由于珍珠的不透明性质,使用漫反射 UV-可见光谱技术进行光谱测量。为了评估表面均匀性,在每个珍珠样本的两个不同位置进行光谱测量。对光谱数据(输入)进行平滑处理以减少噪声,然后将其输入到 ANNs 中,并与珍珠的质量/分级标准(输出)相关联。开发的 ANNs 成功地预测了珍珠类型、贝类生长物种、可能的光泽和颜色增强、供体状况/类型、受体/宿主颜色、供体颜色、珍珠光泽、珍珠颜色、产地。这项研究的结果表明,开发的 UV-Vis 光谱-ANN 方法可作为评估珍珠质量(分级)的更客观方法,并可能成为珍珠分级行业的有价值工具。