[1] |
BIRD J J, BARNES C M, MANSO L J, et al. Fruit quality and defect image classification with conditional GAN data augmentation[J]. Scientia Horticulturae, 2022, 293: 110684.
|
[2] |
XIN M, LI C B, HE X M, et al. Integrated metabolomic and transcriptomic analyses of quality components and associated molecular regulation mechanisms during passion fruit ripening[J]. Postharvest Biology and Technology, 2021, 180: 111601.
|
[3] |
POURDARBANI R, REZAEI B. Automatic detection of greenhouse plants pests by image analysis[J]. Journal of Agriculture Machinery Science, 2011, 7(2):171-174.
|
[4] |
POURDARBANI R, SABZI S, KALANTARI D, et al. A computer vision system based on majority-voting ensemble neural network for the automatic classification of three chickpea varieties[J]. Foods, 2020, 9(2): 113.
|
[5] |
MESA K R, SERRA S, MASIA A, et al. Seasonal trends of starch and soluble carbohydrates in fruits and leaves of ‘Abbé Fétel’ pear trees and their relationship to fruit quality parameters[J]. Scientia Horticulturae, 2016, 211: 60-69.
|
[6] |
NAVARRO J M, BOTÍA P, PÉREZ-PÉREZ J G. Influence of deficit irrigation timing on the fruit quality of grapefruit (Citrus paradisi Mac.)[J]. Food Chemistry, 2015, 175: 329-336.
|
[7] |
MISHRA P, PASSOS D. A synergistic use of chemometrics and deep learning improved the predictive performance of near-infrared spectroscopy models for dry matter prediction in mango fruit[J]. Chemometrics and Intelligent Laboratory Systems, 2021, 212: 104287.
|
[8] |
THEANJUMPOL P, WONGZEEWASAKUN K, MUENMANEE N, et al. Non-destructive identification and estimation of granulation in ‘Sai Num Pung’ tangerine fruit using near infrared spectroscopy and chemometrics[J]. Postharvest Biology and Technology, 2019, 153: 13-20.
|
[9] |
GUO Y, NI Y N, KOKOT S. Evaluation of chemical components and properties of the jujube fruit using near infrared spectroscopy and chemometrics[J]. Spectrochimica Acta Part A: Molecular and Biomolecular Spectroscopy, 2016, 153: 79-86.
|
[10] |
MARTÍNEZ-VALDIVIESO D, FONT R, BLANCO-DÍAZ M T, et al. Application of near-infrared reflectance spectroscopy for predicting carotenoid content in summer squash fruit[J]. Computers and Electronics in Agriculture, 2014, 108: 71-79.
|
[11] |
MISHRA P, WOLTERING E, BROUWER B, et al. Improving moisture and soluble solids content prediction in pear fruit using near-infrared spectroscopy with variable selection and model updating approach[J]. Postharvest Biology and Technology, 2021, 171: 111348.
|
[12] |
LIU Y D, ZHANG Y, JIANG X G, et al. Detection of the quality of juicy peach during storage by visible/near infrared spectroscopy[J]. Vibrational Spectroscopy, 2020, 111: 103152.
|
[13] |
MISHRA P, RUTLEDGE D N, ROGER J M, et al. Chemometric pre-processing can negatively affect the performance of near-infrared spectroscopy models for fruit quality prediction[J]. Talanta, 2021, 229: 122303.
|
[14] |
MULISA BOBASA E, DAO THI PHAN A, MANOLIS C, et al. Effect of sample presentation on the near infrared spectra of wild harvest Kakadu plum fruits (Terminalia ferdinandiana)[J]. Infrared Physics & Technology, 2020, 111: 103560.
|
[15] |
POURDARBANI R, SABZI S, KALANTARI D, et al. Non-destructive visible and short-wave near-infrared spectroscopic data estimation of various physicochemical properties of Fuji apple (Malus pumila) fruits at different maturation stages[J]. Chemometrics and Intelligent Laboratory Systems, 2020, 206: 104147.
|