Salt Content Prediction System of Dried Sea Cucumber (Beche-de-mer) Based on Visual Near-Infrared Imaging

Sabar, A. H. Saputro, C. Imawan
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引用次数: 2

Abstract

Dried sea cucumber (Beche-de-mer) is a culinary food that is considered luxurious and delicious, especially in China, Korea, and Japan, so the price is quite high. Dried sea cucumber (Beche-de-mer) also has high commercial value and high nutritional value. Their quality determines dried sea cucumber (Beche-de-mer) prices on international markets. One of the parameters that determine its quality is salt content. The excessive salt content in Dried sea cucumber (Beche-de-mer) can cause health problems such as hypertension, stroke, digestive system disorders, etc. Therefore, this paper will discuss a prediction system for measuring salt content in Dried sea cucumber (Beche-de-mer) using hyperspectral imaging technique. This system uses reflectance mode with a wavelength from 400 to1000 nm. The hardware from the prediction system for measuring salt content is motors to generate, hyperspectral camera system, two 150 W halogen lamps, Teflon tables, and personal computer link. Then, the PLSR algorithm is applied to the prediction system model at full wavelength. The prediction model is used to obtain the predicted value of salt content. Then the results of the prediction model are compared with the data references obtained by the mercury nitrate method. The root means square errors and correlation coefficient are used to evaluate the prediction system performance of salt content. The best result of the prediction system in this work is to have a correlation coefficient of 0.99 and root mean square errors of 0.27, respectively, with the number of PLS component is 25. Based on the results of this work, the proposed system can be used as an alternative method of measuring the salt content in dried sea cucumber (Beche-de-mer) with excellent accuracy and high reliability.
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基于视觉近红外成像的干海参含盐量预测系统
干海参(bechee -de-mer)是一种被认为是奢侈美味的美食,特别是在中国、韩国和日本,因此价格相当高。干海参(Beche-de-mer)也具有很高的商业价值和营养价值。它们的质量决定了干海参在国际市场上的价格。决定其质量的参数之一是含盐量。干海参(Beche-de-mer)含盐量过高会引起高血压、中风、消化系统紊乱等健康问题。为此,本文将讨论一种利用高光谱成像技术测定海参中盐分含量的预测系统。该系统采用波长为400 ~ 1000nm的反射模式。用于测量盐含量的预测系统的硬件是电机,高光谱相机系统,两个150w卤素灯,聚四氟乙烯表和个人电脑连接。然后,将PLSR算法应用到全波长预测系统模型中。利用预测模型得到含盐量的预测值。然后将预测模型的结果与硝酸汞法得到的参考数据进行了比较。采用均方根误差和相关系数对含盐量预测系统的性能进行评价。本工作预测系统的最佳结果为相关系数为0.99,均方根误差为0.27,PLS分量个数为25。基于本工作的结果,该系统可作为测定干海参(Beche-de-mer)中盐含量的替代方法,具有良好的准确性和高可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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