挖掘黄金:通过深度学习优化评估藏红花(藏红花L.)的真实性

Ahmed Elaraby, Hussein Ali, Bin Zhou, Jorge M. Fonseca
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引用次数: 0

摘要

藏红花是全球食品市场上最令人垂涎和污染最严重的产品之一。藏红花行业面临的一个主要挑战是很难区分供应链上掺假和正宗的干藏红花。目前分析内在化合物(藏红花素、微藏红花素和番红花醛)的方法复杂、昂贵且耗时。通过深度学习实现的计算机视觉改进已经成为一种潜在的替代方案,可以作为区分藏红花纯度的实用工具。方法提出了一种基于深度学习的藏红花真伪鉴别方法。研究的重点是通过人工收集的包含两类(藏红花和非藏红花)图像的数据集来检测主要的区别,从而帮助从真实样本中区分出假样本。为此,训练了深度卷积神经模型MobileNetV2和自适应动量估计(Adam)优化器。结果深度学习模型的准确率为99%,查全率为99%,准确率为97%,F-score为98%,效率非常高。讨论了确定获得积极结果的关键因素。这种新颖的方法是区分真伪藏红花产品的有效替代方法,这可能有利于藏红花产业从生产者到消费者,并可以为其他香料开发模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Digging for gold: evaluating the authenticity of saffron (Crocus sativus L.) via deep learning optimization
Introduction Saffron is one of the most coveted and one of the most tainted products in the global food market. A major challenge for the saffron industry is the difficulty to distinguish between adulterated and authentic dried saffron along the supply chain. Current approaches to analyzing the intrinsic chemical compounds (crocin, picrocrocin, and safranal) are complex, costly, and time-consuming. Computer vision improvements enabled by deep learning have emerged as a potential alternative that can serve as a practical tool to distinguish the pureness of saffron. Methods In this study, a deep learning approach for classifying the authenticity of saffron is proposed. The focus was on detecting major distinctions that help sort out fake samples from real ones using a manually collected dataset that contains an image of the two classes (saffron and non-saffron). A deep convolutional neural model MobileNetV2 and Adaptive Momentum Estimation (Adam) optimizer were trained for this purpose. Results The observed metrics of the deep learning model were: 99% accuracy, 99% recall, 97% precision, and 98% F-score, which demonstrated a very high efficiency. Discussion A discussion is provided regarding key factors identified for obtaining positive results. This novel approach is an efficient alternative to distinguish authentic from adulterated saffron products, which may be of benefit to the saffron industry from producers to consumers and could serve to develop models for other spices.
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