基于连体神经网络的高光谱成像蜂蜜质量检测

Guyang Zhang, W. Abdulla
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摘要

蜂蜜是一种营养丰富的天然食品,具有许多健康益处,因此被广泛用作天然甜味剂或作为膳食成分食用。不同植物来源的蜂蜜有不同的质量、风味或健康益处。因此它们的市场价值差别很大。许多研究都致力于用各种基于化学的技术来调查蜂蜜的质量。然而,这些方法昂贵、费力且耗时。此外,不可能收集到含有各种各样植物来源或掺假方法的蜂蜜样品。因此,更可行的方法是开发一个包含感兴趣的真实蜂蜜类型的数据库,其数据也易于处理和收集,然后设计一个模型来判断未知样本是否属于数据库中同类样本。本文提出了一种新的方法,使用暹罗神经网络来学习蜂蜜样品高光谱成像之间的相似性。暹罗神经网络学习允许模型在给定一个新类别的单个示例时做出正确的预测。通过卷积神经网络结构,学习到的特征获得了广义的判别能力,能够正确预测新的未见图像。我们获得的平均验证准确率为95%。我们有趣地发现,不同生产者从同一植物来源收集的蜂蜜类型的光谱特性差异很大
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Hyperspectral Imaging for Honey Quality Detection using Siamese Neural Networks
Honey is a nutritious natural food product with many health benefits and is thus widely utilized as a natural sweetener or consumed as a dietary ingredient. Different botanic origin honey types have various quality, flavor, or health benefits. Therefore their market values differ significantly. Many studies have been devoted to investigating honey quality with various chemically-based techniques. Nevertheless, these methods are expensive, laborious, and time-consuming. In addition, it is impossible to collect honey samples containing all the wide variety of botanical origins or adulteration methods. Thus, a more feasible approach is to develop a databank including authentic honey types of interest, whose data is also easy to process and collect, then designe a model to tell whether an unknown sample belongs to the same class of samples in the databank or not. This paper proposes a new approach using Siamese neural networks designated to learn similarities between hyperspectral imaging of honey samples. Siamese neural networks learning allows models to make correct predictions, given only a single example of a new class. With convolutional neural network architecture, the learned features acquired generalized the discriminating power to predict new unseen images correctly. The average validation accuracy rate we achieved is 95%. We interestingly found that the spectra properties of honey types collected from the same botanic origin produced by different producers vary significantly
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