School of Computing and Mathematics, University of Ulster, Shore Rd, Newtownabbey BT37 0QB, UK.
School of Engineering, University of Ulster, Shore Rd, Newtownabbey BT37 0QB, UK.
Sensors (Basel). 2018 May 25;18(6):1708. doi: 10.3390/s18061708.
Food fraud, the sale of goods that have in some way been mislabelled or tampered with, is an increasing concern, with a number of high profile documented incidents in recent years. These recent incidents and their scope show that there are gaps in the food chain where food authentication methods are not applied or otherwise not sufficient and more accessible detection methods would be beneficial. This paper investigates the utility of affordable and portable visible range spectroscopy hardware with partial least squares discriminant analysis (PLS-DA) when applied to the differentiation of apple types and organic status. This method has the advantage that it is accessible throughout the supply chain, including at the consumer level. Scans were acquired of 132 apples of three types, half of which are organic and the remaining non-organic. The scans were preprocessed with zero correction, normalisation and smoothing. Two tests were used to determine accuracy, the first using 10-fold cross-validation and the second using a test set collected in different ambient conditions. Overall, the system achieved an accuracy of 94% when predicting the type of apple and 66% when predicting the organic status. Additionally, the resulting models were analysed to find the regions of the spectrum that had the most significance. Then, the accuracy when using three-channel information (RGB) is presented and shows the improvement provided by spectroscopic data.
食品欺诈,即商品以某种方式被错误贴标签或篡改后进行销售,是一个日益令人担忧的问题,近年来有许多备受瞩目的记录在案的事件。这些最近的事件及其范围表明,在食物链中存在一些漏洞,没有应用食品认证方法,或者其他方法不够充分,更易于获得的检测方法将是有益的。本文研究了在苹果类型和有机状态的区分中,使用经济实惠且便携式的可见光谱硬件和偏最小二乘判别分析(PLS-DA)的效用。这种方法的优点是它在整个供应链中都可以使用,包括在消费者层面。对 132 个苹果进行了扫描,其中一半是有机的,另一半是非有机的。扫描结果经过零校正、归一化和平滑预处理。使用两种测试来确定准确性,第一种使用 10 倍交叉验证,第二种使用在不同环境条件下收集的测试集。总的来说,该系统在预测苹果类型时的准确率为 94%,在预测有机状态时的准确率为 66%。此外,还对得到的模型进行了分析,以找到具有最大意义的光谱区域。然后,介绍了使用三通道信息(RGB)时的准确率,并展示了光谱数据提供的改进。