Detection of common defects on jujube using Vis-NIR and NIR hyperspectral imaging

作者:Wu, Longguo; He, Jianguo*; Liu, Guishan; Wang, Songlei; He, Xiaoguang
来源:Postharvest Biology and Technology, 2016, 112: 134-142.
DOI:10.1016/j.postharvbio.2015.09.003

摘要

A hyperspectral imaging technique was used for acquiring reflectance images to identify common defects (bruise, insect-infestetation and cracks) on jujube fruit. Hyperspectral images of jujubes were evaluated from the regions of interest through principal component analysis (PCA) to select five optimal wavelengths (420,521,636,670,679 nm) from 300 samples in the spectral region of 400-1000 nm and four important wavelength (1028,1118,1359,1466 nm) in the region of 978-1586 nm. Compared with support vector machine (SVM) models, the soft independent modeling of class analogy (SIMCA) models of intact, cracked, bruised, and insect-infested jujubes based on five wavelengths in NIR showed good performance with high classification rates of 96%, 96%, 93.9% and 95.6%, respectively. This research demonstrates the feasibility of implementing hyperspectral imaging for identifying common defects and enhancing the product quality and marketability.