System and method for non-invasive real-time prediction of liquid food quality within enclosed package

US2022120693A1 · US · A1

Patent metadata
FieldValue
Publication numberUS-2022120693-A1
Application numberUS-202117504823-A
CountryUS
Kind codeA1
Filing dateOct 19, 2021
Priority dateOct 20, 2020
Publication dateApr 21, 2022
Grant date

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  5. First independent claim

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Abstract

Official abstract text for this publication.

State of the art food quality measurement techniques fail to determine quality of the food item once it is packed and sealed in a container. The disclosure herein generally relates to food quality prediction, and, more particularly, to a system and method for predicting food quality in a non-invasive manner. A Color Changing Indicator (CCI) in a biosensor strip forming a component of the enclosed package in which the liquid food item is packed, changes color when came in contact with the liquid food item. For different quality of the liquid food item the CCI has different color. Based on the color of the CCI, and ambient temperature and relative humidity at the time the color of the CCI is determined, a machine learning model determines rate of deterioration of the liquid food item, and then predicts remaining shelf life, which in turn provided as output to a user.

First claim

Opening claim text (preview).

What is claimed is: 1 . A method for non-invasive real-time prediction of quality of a liquid food item within enclosed package, comprising: determining color of a Color Changing Indicator (CCI) in a bio-sensor strip forming a component of the enclosed package, when the liquid food item comes in contact with the CCI, via one or more hardware processors, wherein the CCI comprises: a transparent poly-di-methyl-siloxane (PDMS) substrate; a thin film layer of bio-edible and bio-compatible color changing pigments, wherein the bio-edible and bio-compatible color changing pigments change color by interacting with one or more chemical components of the liquid food item, wherein a plurality of physio-thermal properties of each of the one or more chemical components vary with degradation of the liquid food item; and an optical device, wherein the color change of the color changing pigments is visible through a transparent lens of the optical device; processing information on a) the determined color of the CCI, b) a measured ambient temperature inside the enclosed package while determining the color of the CCI, and c) a measured relative humidity inside the enclosed package while determining the color of the CCI, using a machine learning data model, wherein the machine learning data model predicts the remaining shelf life of beverages; and generating a result indicating the determined value of the remaining shelf life of the liquid food item. 2 . The method as claimed in claim 1 , wherein a training data used for training the machine learning data model comprises information on quality of the liquid food item corresponding to a plurality of combinations of a) the color of CCI, b) the value of the measured ambient temperature and the relative humidity 3 . The method as claimed in claim 1 , wherein determining the value of the remaining shelf life of the liquid food item comprises: determining a current quality of the liquid food item for the determined color of the CCI, the measured ambient temperature inside the enclosed package, and the measured relative humidity inside the enclosed package, in comparison with the training data; determining a rate of deterioration of the liquid food item, based on the determined current quality of the liquid food item, and time expired, wherein the time expired is measured based on packaging date of the liquid food item; and determining the value of the remaining shelf life of the liquid food item, based on the determined rate of deterioration. 4 . A system for non-invasive real-time prediction of quality of a liquid food item within enclosed package, comprising: one or more hardware processors; a communication interface; and a memory storing a plurality of instructions, wherein the plurality of instructions when executed, cause the one or more hardware processors to: determine color of a Color Changing Indicator (CCI) in a bio-sensor strip forming a component of the enclosed package, when the liquid food item comes in contact with the CCI, wherein the CCI comprises: a transparent poly-di-methyl-siloxane (PDMS) substrate; a thin film of bio-edible and bio-compatible color changing pigments, wherein the bio-edible and bio-compatible color changing pigments change color by interacting with one or more chemical components of the liquid food item, wherein a plurality of physio-thermal properties of each of the one or more chemical components vary with degradation of the liquid food item; and an optical device, wherein the color change of the color changing pigments is visible through a transparent lens of the optical device; process information on a) the determined color of the CCI, b) a measured ambient temperature inside the enclosed package while determining the color of the CCI, and c) a measured relative humidity inside the enclosed package while determining the color of the CCI, using a machine learning data model, wherein the machine learning data model predicts the remaining shelf life of beverages; and generate a result indicating the determined value of the remaining shelf life of the liquid food item. 5 . The system as claimed in claim 4 , wherein a training data used for training the machine learning data model comprises information on quality of the liquid food item corresponding to a plurality of combinations of a) the color of CCI, b) the value of the measured ambient temperature, and c) the value of the measured relative humidity. 6 . The system as claimed in claim 4 , wherein the system determines the value of the remaining shelf life of the liquid food item by: determining a current quality of the liquid food item for the determined color of the CCI, the measured ambient temperature inside the enclosed package, and the measured relative humidity inside the enclosed package, in comparison with the training data; determining a rate of deterioration of the liquid food item, based on the determined current quality of the liquid food item, and time expired, wherein the time expired is measured based on packaging date of the liquid food item; and predicts the remaining shelf life of beverages based on the determined rate of deterioration. 7 . A non-transitory computer readable medium for non-invasive real-time prediction of quality of a liquid food item within enclosed package, wherein the non-transitory computer readable medium comprising a plurality of instructions, which when executed, cause: determining color of a Color Changing Indicator (CCI) in a bio-sensor strip forming a component of the enclosed package, when the liquid food item comes in contact with the CCI, via one or more hardware processors, wherein the CCI comprises: a transparent poly-di-methyl-siloxane (PDMS) substrate; a thin film layer of bio-edible and bio-compatible color changing pigments, wherein the bio-edible and bio-compatible color changing pigments change color by interacting with one or more chemical components of the liquid food item, wherein a plurality of physio-thermal properties of each of the one or more chemical components vary with degradation of the liquid food item; and an optical device, wherein the color change of the color changing pigments is visible through a transparent lens of the optical device; processing information on a) the determined color of the CCI, and b) a measured ambient temperature and relative humidity inside the enclosed package while determining the color of the CCI inside the enclosed package while determining the color of the CCI, using a machine learning data model, wherein the machine learning data model determines value of a remaining shelf life of the liquid food item; and generating a result indicating the determined value of the remaining shelf life of the liquid food item. 8 . The non-transitory computer readable medium as claimed in claim 7 , wherein a training data used for training the machine learning data model comprises information on quality of the liquid food item corresponding to a plurality of combinations of a) the color of CCI, b) the value of the measured ambient temperature and the relative humidity 9 . The non-transitory computer readable medium as claimed in claim 7 , wherein the non-transitory computer readable medium determines the value of the remaining shelf life of the liquid food item by: determining a current quality of the liquid food item for the determined color of the CCI, the measured ambient temperature inside the enclosed package, and the measured relative humidity inside the enclosed package, in comparison with the training data; determining a rate of deterioration of the liquid food item, based on the determined current quality of the liquid food item, and time expired, wherein the time expired is measured

Assignees

Inventors

Classifications

  • Dipstick; Test strip · CPC title

  • G01N33/02Primary

    Food · CPC title

  • G01N21/78Primary

    producing a change of colour · CPC title

  • Inventory or stock management, e.g. order filling, procurement or balancing against orders · CPC title

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What does patent US2022120693A1 cover?
State of the art food quality measurement techniques fail to determine quality of the food item once it is packed and sealed in a container. The disclosure herein generally relates to food quality prediction, and, more particularly, to a system and method for predicting food quality in a non-invasive manner. A Color Changing Indicator (CCI) in a biosensor strip forming a component of the enclos…
Who is the assignee on this patent?
Tata Consultancy Services Ltd
What technology area does this patent fall under?
Primary CPC classification G01N33/02. Mapped technology areas include Physics.
When was this patent published?
Publication date Thu Apr 21 2022 00:00:00 GMT+0000 (Coordinated Universal Time) (A1). Legal status and post-grant events are not shown on this page.
What related patents are in patentsdb?
We list 8 related publications on this page (citations in our corpus or others sharing the same primary CPC).