Journal article

Quality estimation of nuts using deep learning classification of hyperspectral imagery

Y Han, Z Liu, K Khoshelham, SH Bai

Computers and Electronics in Agriculture | ELSEVIER SCI LTD | Published : 2021

Abstract

Rapid quality assessment of nuts is important to increase the shelf life and minimise the nut loss due to rancidity. Existing methods for nut quality estimation are usually slow and destructive. In this study, a quick and non-destructive method using hyperspectral imaging (HSI) coupled with deep learning classification was applied for the quality estimation of unblanched kernels in Canarium indicum categorized by peroxide values (PV). A set of 2300 sub-images of 289 C. indicum samples were used to train a convolutional neural network (CNN) to estimate quality levels. Series of ablation experiments showed that the highest overall accuracy of PV estimation on the test set reached 93.48%, with ..

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University of Melbourne Researchers

Grants

Awarded by Australian Centre for International Agricultural Research


Funding Acknowledgements

This research was undertaken using the LIEF HPC-GPGPU Facility hosted at the University of Melbourne. This Facility was established with the assistance of LIEF Grant LE170100200. The study was partly funded by the Australian Centre for International Agricultural Research (projects FST/2014/099 and FST/2017/038). We thank Dr Iman Tahmasbian for providing images and Ms Dalsie Hannet for providing the nuts.