Hyperspectral imaging and machine learning for monitoring produce ripeness

dc.contributor.authorLogan, Riley D.
dc.contributor.authorScherrer, Bryan
dc.contributor.authorSenecal, Jacob
dc.contributor.authorWalton, Neil S.
dc.contributor.authorPeerlinck, Amy
dc.contributor.authorSheppard, John W.
dc.contributor.authorShaw, Joseph A.
dc.date.accessioned2021-11-01T20:58:21Z
dc.date.available2021-11-01T20:58:21Z
dc.date.issued2020-04
dc.description.abstractHyperspectral imaging is a powerful remote sensing tool capable of capturing rich spectral and spatial information. Although the origins of hyperspectral imaging are in terrestrial remote sensing, new applications are emerging rapidly. Owing to its non-destructive nature, hyperspectral imaging has become a useful tool for monitoring produce ripeness. This paper describes the process that uses a visible near-infrared (VNIR) hyperspectral imager from Resonon, Inc., coupled with machine learning algorithms to assess the ripeness of various pieces of produce. The images were converted to reflectance across a spectral range of 387.12 nm to 1023.5 nm, with a spectral resolution of 2.12 nm. A convolutional neural network was used to perform age classification for potatoes, bananas, and green peppers. Additionally, a genetic algorithm was used to determine the wavelengths carrying the most useful information for age classification. Experiments were run using RGB images, full spectrum hyperspectral images, and the genetic algorithm feature selection method. Results showed that the genetic algorithm-based feature selection method outperforms RGB images for all tested produce, outperforms hyperspectral imagery for bananas, and matches hyperspectral imagery performance for green peppers. This feature selection method is being used to develop a low-cost multi-spectral imager for use in monitoring produce in grocery stores.en_US
dc.identifier.citationLogan, Riley D., Bryan J. Scherrer, Jacob Senecal, Neil S. Walton, Amy Peerlinck, John W. Sheppard, and Joseph A. Shaw. “Hyperspectral Imaging and Machine Learning for Monitoring Produce Ripeness.” Edited by Moon S. Kim, Byoung-Kwan Cho, and Bryan A. Chin. Sensing for Agriculture and Food Quality and Safety XII (April 22, 2020). doi:10.1117/12.2560968.en_US
dc.identifier.urihttps://scholarworks.montana.edu/handle/1/16521
dc.language.isoen_USen_US
dc.rightsCopyright 2020 Society of Photo‑Optical Instrumentation Engineers (SPIE). One print or electronic copy may be made for personal use only. Systematic reproduction and distribution, duplication of any material in this publication for a fee or for commercial purposes, and modification of the contents of the publication are prohibited.en_US
dc.titleHyperspectral imaging and machine learning for monitoring produce ripenessen_US
dc.typeArticleen_US
mus.citation.journaltitleSensing for Agriculture and Food Quality and Safety XIIen_US
mus.citation.volume11421en_US
mus.data.thumbpage4en_US
mus.identifier.doi10.1117/12.2560968en_US
mus.relation.collegeCollege of Engineeringen_US
mus.relation.departmentComputer Science.en_US
mus.relation.departmentElectrical & Computer Engineering.en_US
mus.relation.universityMontana State University - Bozemanen_US

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