TY - JOUR
T1 - Machine Vision with a CMOS-Based Hyperspectral Imaging Sensor Enables Sensing Meat Freshness
AU - Lee, Suyeon
AU - Kim, Hyochul
AU - Kim, Seokin
AU - Son, Hyungbin
AU - Han, Jeong Su
AU - Kim, Un Jeong
N1 - Publisher Copyright:
© 2024 American Chemical Society.
PY - 2025/1/24
Y1 - 2025/1/24
N2 - Imaging spectral information of materials and analysis of its properties have become an intriguing tool for consumer electronics used for food inspection, beauty care, etc. Those sensory physical quantities are difficult to quantify. Hyperspectral imaging cameras, which capture the figure and spectral information simultaneously, can be a good candidate for nondestructive remote sensing. In this study, with the aid of a hyperspectral imaging system (HIS) and machine learning (ML) techniques, meat freshness is converted into a measurable physical quantity, i.e., the freshness index (FI). Herein, the FI is defined as meat fluorescence, which has a strong correlation with the bacterial density. Combined with ML techniques, hyperspectral data are processed more efficiently. By employing linear discriminant and quadratic component analyses, the FI can be estimated from its decision boundary after hyperspectral data are obtained in an unknown freshness state. We demonstrate that the HIS integrated with ML performs as the artificial eye and brain, which is advanced machine vision for consumer electronics, including refrigerators and smartphones. Advanced sensing versatility utilized by computational sensing systems allows hyper-personalization and hyper-customization of human life.
AB - Imaging spectral information of materials and analysis of its properties have become an intriguing tool for consumer electronics used for food inspection, beauty care, etc. Those sensory physical quantities are difficult to quantify. Hyperspectral imaging cameras, which capture the figure and spectral information simultaneously, can be a good candidate for nondestructive remote sensing. In this study, with the aid of a hyperspectral imaging system (HIS) and machine learning (ML) techniques, meat freshness is converted into a measurable physical quantity, i.e., the freshness index (FI). Herein, the FI is defined as meat fluorescence, which has a strong correlation with the bacterial density. Combined with ML techniques, hyperspectral data are processed more efficiently. By employing linear discriminant and quadratic component analyses, the FI can be estimated from its decision boundary after hyperspectral data are obtained in an unknown freshness state. We demonstrate that the HIS integrated with ML performs as the artificial eye and brain, which is advanced machine vision for consumer electronics, including refrigerators and smartphones. Advanced sensing versatility utilized by computational sensing systems allows hyper-personalization and hyper-customization of human life.
KW - advanced machine vision
KW - fluorescence imaging
KW - freshness sensing
KW - hyperspectral imaging
KW - machine learning
UR - http://www.scopus.com/inward/record.url?scp=85213260242&partnerID=8YFLogxK
U2 - 10.1021/acssensors.4c02213
DO - 10.1021/acssensors.4c02213
M3 - Article
C2 - 39721943
AN - SCOPUS:85213260242
SN - 2379-3694
VL - 10
SP - 236
EP - 245
JO - ACS Sensors
JF - ACS Sensors
IS - 1
ER -