2021
DOI: 10.1016/j.foodcont.2020.107801
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Deep transfer learning to verify quality and safety of ground coffee

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Cited by 32 publications
(10 citation statements)
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“…The studies showed that Cadmium, Chromium, Lead, Mercury, Nickel (Siddharth et al, 2017) and Cobalt are classified in the group with moderate to high toxicity (Bauer, 2013). Silver ion is a highly toxic substance in terms of function (as an enzymatic and metabolic inhibitor) and biochemically silver ions (Ag+) can act as a potent inhibitor of some enzyme (Pradana-lópez et al, 2021).…”
Section: Resultsmentioning
confidence: 99%
“…The studies showed that Cadmium, Chromium, Lead, Mercury, Nickel (Siddharth et al, 2017) and Cobalt are classified in the group with moderate to high toxicity (Bauer, 2013). Silver ion is a highly toxic substance in terms of function (as an enzymatic and metabolic inhibitor) and biochemically silver ions (Ag+) can act as a potent inhibitor of some enzyme (Pradana-lópez et al, 2021).…”
Section: Resultsmentioning
confidence: 99%
“…Furthermore, an artificial neural network (ANN) was also popular to detect counterfeiting of Muscatel wines (Cancilla et al, 2020), edible bird's nests (90% accuracy) (Huang et al, 2019), and coffee chemical compounds (such as phenol, pH, and coffee purity) up to 90% accuracy and mean square error 0.0442 (Hendrawan et al, 2019). Above that, recent research in convolutional neural networks (CNN), another type of AI, gave more practical results on detecting honey adulteration resulting in up to 97.96% accuracy (Li et al, 2021;Izquierdo et al, 2020a), extra virgin olive oil with 97% accuracy (Izquierdo et al, 2020b), and counterfeiting in Arabica and Robusta coffee with an error below 1% (Lopez et al, 2021). Hence, CNN was more potential to detect coffee quality and authenticity than other learning machines.…”
Section: Introductionmentioning
confidence: 99%
“…SVM = Support Vector Machine, RBF = Radial Basis Function, CNN = Convolutional Neural Network, Pre = Pre-trained with ImageNet, HSI = Hyperspectral Imaging, PL = Polarized, LS = Laser Scatter, ch = channels, f = features, Mono = Monochrome, and IRAS = Infrared image Acquisition System. Medus et al 11 Thota et al 12 Prada-López et al 17 Xie et al 18 Barnes et al 40 Our method Quality control Sealing of heat-sealed food trays (Anomalies detected: washers, sugar, flange, plywood, cork, elastic rubber, wood, paper, sliver paper, hair, and polarized plastic) Presence and legibility of use-by date information from food packages Types of coffee and adulterations Atlantic salmon bone residues Detect copper wire in the seal of heat-sealed packages Sealing of thermoforming food packages Method (Accuracy) SVM RBF 84.3% CNN-ResNet18 96% CNN-ResNet18(Pre) 96% CNN-ResNet50 95% 94% CNN-ResNet50(Pre) 92.5% 97% CNN-ResNet34(Pre) 98.6% CNN-VGG16...…”
Section: Introductionmentioning
confidence: 99%