2021
DOI: 10.1109/access.2021.3086038
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Artificial Perception of the Beverages: An In-Depth Review of the Tea Sample

Abstract: India is the second-largest tea producer and consumer in the world after China. In 2017, the Indian tea market size accounted for 130 billion Indian rupees. An estimated global tea market size was at USD 13.31 billion in 2019, and the expected compound annual growth rate is 5.5% up to the year 2025. India can grab worth tea market size globally by making market strategies with AI and ML-based demonstrations for the unique identity of tea flavor. Conventional instruments available are not handy, time-consuming … Show more

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Cited by 7 publications
(3 citation statements)
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References 99 publications
(114 reference statements)
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“…Metal oxide semiconductor (MOS) gas sensors have been widely utilized in military, scientific research and various industries due to their unique advantages, such as a small size, low power consumption, high sensitivity, and compatibility with silicon chips [44]. Electronic nose systems employ sensor arrays with different surface chemical properties; increasing the number of sensor arrays can extract more "features" of volatile organic compound (VOC) molecules and provide a "manyto-one" or "many-to-many" method to differentiate VOC gas molecules through pattern recognition/machine learning algorithms [45][46][47][48]. Gonzalez combined electronic nose technology with machine learning to achieve artificial intelligence based on a low-cost sensor network [49].…”
Section: Discussionmentioning
confidence: 99%
“…Metal oxide semiconductor (MOS) gas sensors have been widely utilized in military, scientific research and various industries due to their unique advantages, such as a small size, low power consumption, high sensitivity, and compatibility with silicon chips [44]. Electronic nose systems employ sensor arrays with different surface chemical properties; increasing the number of sensor arrays can extract more "features" of volatile organic compound (VOC) molecules and provide a "manyto-one" or "many-to-many" method to differentiate VOC gas molecules through pattern recognition/machine learning algorithms [45][46][47][48]. Gonzalez combined electronic nose technology with machine learning to achieve artificial intelligence based on a low-cost sensor network [49].…”
Section: Discussionmentioning
confidence: 99%
“…The results unanimously yielded high accuracy using all three classifiers with low sparsity models [39]. Furthermore, various factors influencing the taste of tea, such as astringency, bitterness, and smell, have been analyzed throughout the course of the decade and have been thoroughly reviewed in a study in 2021 [40]. The study spanned various sensor arrays in combination, such as e-tongue, e-nose, and even computer vision, to perceive and classify tea samples.…”
Section: Accuracy In Percentagementioning
confidence: 99%
“…China is the first producer and consumer of tea, with a long history of tea drinking, and tea has long been another way of embodiment of life. China's tea culture originates from a long time and is so profound that it has become one of the carriers to show the charm of Chinese traditional culture (Patil, Bachute, & Kotecha, 2021). Tea not only embodies a long-standing culture but also reflects a mood and renders an atmosphere, such as the beauty of the "tea ceremony" culture.…”
Section: Review Of Literature Tea Cognitionmentioning
confidence: 99%