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A comparison of different optical instruments and machine learning techniques to identify sprouting activity in potatoes during storage

Rady, Ahmed M.; Guyer, Daniel E.; Donis-Gonz�lez, Irwin R.; Kirk, William; Watson, Nicholas James

A comparison of different optical instruments and machine learning techniques to identify sprouting activity in potatoes during storage Thumbnail


Authors

Ahmed M. Rady

Daniel E. Guyer

Irwin R. Donis-Gonz�lez

William Kirk

Nicholas James Watson



Abstract

The quality of potato tubers is dependent on several attributes been maintained at appropriate levels during storage. One of these attributes is sprouting activity that is initiated from meristematic regions of the tubers (eyes). Sprouting activity is a major problem that contributes to reduced shelf life and elevated sugar content, which affects the marketability of seed tubers as well as fried products. This study compared the capabilities of three different optical systems (1: visible/near-infrared (Vis/NIR) interactance spectroscopy, 2: Vis/NIR hyperspectral imaging, 3: NIR transmittance) and machine learning methods to detect sprouting activity in potatoes based on the primordial leaf count (LC). The study was conducted on Frito Lay 1879 and Russet Norkotah cultivars stored at different temperatures and classification models were developed that considered both cultivars combined and classified the tubers as having either high or low sprouting activity. Measurements were performed on whole tubers and sliced samples to see the effect this would have on identifying sprouting activity. Sequential forward selection was applied for wavelength selection and the classification was carried out using K-nearest neighbor, partial least squares discriminant analysis, and soft independent modeling class analogy. The highest classification accuracy values obtained by the hyperspectral imaging system and was 87.5% and 90% for sliced and whole samples, respectively. Data fusion did not show classification improvement for whole tubers, whereas a 7.5% classification accuracy increase was illustrated for sliced samples. By investigating different optical techniques and machine learning methods, this study provides a first step toward developing a handheld optical device for early detection of sprouting activity, enabling advanced aid potato storage management.

Citation

Rady, A. M., Guyer, D. E., Donis-González, I. R., Kirk, W., & Watson, N. J. (2020). A comparison of different optical instruments and machine learning techniques to identify sprouting activity in potatoes during storage. Journal of Food Measurement and Characterization, 14(6), 3565-3579. https://doi.org/10.1007/s11694-020-00590-2

Journal Article Type Article
Acceptance Date Jul 30, 2020
Online Publication Date Aug 12, 2020
Publication Date 2020-12
Deposit Date Aug 28, 2020
Publicly Available Date Aug 28, 2020
Journal Journal of Food Measurement and Characterization
Print ISSN 2193-4126
Electronic ISSN 2193-4134
Publisher Springer Verlag
Peer Reviewed Peer Reviewed
Volume 14
Issue 6
Pages 3565-3579
DOI https://doi.org/10.1007/s11694-020-00590-2
Keywords Potatoes; Near-infrared; Hyperspectral imaging; Sprouting; Primordial leaf count; Classification; Machine learning; Sensor fusion
Public URL https://nottingham-repository.worktribe.com/output/4855695
Publisher URL https://link.springer.com/article/10.1007/s11694-020-00590-2

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