2022
DOI: 10.1142/s0218488522400104
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Performance Metrics on Hyperspectral Images in Fuzzy Contextual Convolutional Neural Network for Food Quality Analyzer

Abstract: The quality of food and the safety of consumer is one of the major essential things in our day-to-day life. To ensure the quality of foods through their various attributes, different types of methods have been introduced. In this proposed method, three underlying blocks namely Hyperspectral Food Image Context Extractor (HFICE), Hyperspectral Context Fuzzy Classifier (HCFC) and Convolutional Neural Network (CNN) for Food Quality Analyzer (CFQA). Hyperspectral Food Image Context Extractor module is used as the p… Show more

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“…ANNs are employed in various fields such as classification, pattern recognition, prediction, etc [10][11][12] . Recently, the applicability of ANN is increased by providing solution to engineering applications like groundwater monitoring, concrete strength prediction, hopper discharge rate prediction, and prediction of friction factor of pure water [12][13][14][15] .…”
Section: Precise Prediction Of Launch Speed For Athletes In the Aeria...mentioning
confidence: 99%
“…ANNs are employed in various fields such as classification, pattern recognition, prediction, etc [10][11][12] . Recently, the applicability of ANN is increased by providing solution to engineering applications like groundwater monitoring, concrete strength prediction, hopper discharge rate prediction, and prediction of friction factor of pure water [12][13][14][15] .…”
Section: Precise Prediction Of Launch Speed For Athletes In the Aeria...mentioning
confidence: 99%