2022
DOI: 10.1021/acsfoodscitech.2c00124
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Real-Time and Rapid Food Quality Monitoring Using Smart Sensory Films with Image Analysis and Machine Learning

Abstract: Detecting and reporting the quality of packaged food to the consumer in real-time can reduce the consumption of poor-quality food products. Current food quality detection and reporting technologies of perishable foods are usually expensive, complicated, and take a significantly long time to convey results. Herein, a real-time, simple, and user-friendly food freshness detection prototype was developed by combining a glycerol-based sensory film with unique visual color analysis and the k-nearest neighbors algori… Show more

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Cited by 10 publications
(4 citation statements)
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“…This strategy incorporates an inherent food categorization machine learning technique from the developed QR sticker with fabricated pH responsive sensor film in Figure 17A−C. 87 Despite the existence of quick and accurate analytical techniques for detecting biogenic amines that are present in food products, extensive attempts have been made to develop portable and affordable instruments for discriminating biogenic amines in food items to accomplish on-site detection of food spoilage. Singh et al developed a field-deployable crossreactive array-based sensor and mobile plate reader for the identification of biogenic amines as shown in Figure 18A.…”
Section: Machine Learning-inspired Devices In Food Forensicsmentioning
confidence: 99%
See 3 more Smart Citations
“…This strategy incorporates an inherent food categorization machine learning technique from the developed QR sticker with fabricated pH responsive sensor film in Figure 17A−C. 87 Despite the existence of quick and accurate analytical techniques for detecting biogenic amines that are present in food products, extensive attempts have been made to develop portable and affordable instruments for discriminating biogenic amines in food items to accomplish on-site detection of food spoilage. Singh et al developed a field-deployable crossreactive array-based sensor and mobile plate reader for the identification of biogenic amines as shown in Figure 18A.…”
Section: Machine Learning-inspired Devices In Food Forensicsmentioning
confidence: 99%
“…Pounds et al designed a rapid, on-site food spoilage identification technique utilizing a smartphone application that can check and examine the color of a novel designed sensor film installed inside a quick response (QR) sticker to recognize features related with food deterioration. This strategy incorporates an inherent food categorization machine learning technique from the developed QR sticker with fabricated pH responsive sensor film in Figure A–C …”
Section: Machine Learning-inspired Devices In Food Forensicsmentioning
confidence: 99%
See 2 more Smart Citations