Variety classification and identification of jujube based on near-infrared spectroscopy and 1D-CNN
[Display omitted] •Offers a method utilizing near-infrared spectroscopy data and neural networks for red date origin traceability.•Analyze and compare the accuracy and efficiency of different algorithms with different amount of data.•The CNN algorithm demonstrated peak accuracy across different data...
Saved in:
Published in | Computers and electronics in agriculture Vol. 223 |
---|---|
Main Authors | , , , , , , , , |
Format | Journal Article |
Language | English |
Published |
Elsevier B.V
01.08.2024
|
Subjects | |
Online Access | Get full text |
Cover
Loading…
Abstract | [Display omitted]
•Offers a method utilizing near-infrared spectroscopy data and neural networks for red date origin traceability.•Analyze and compare the accuracy and efficiency of different algorithms with different amount of data.•The CNN algorithm demonstrated peak accuracy across different data volumes, reaching a maximum of 94.25 %.•At a small sample size of 700, CNN achieved an accuracy of 90.48 %, while other algorithms remained below 90 %.
Jujube is an important economic crop in Xinjiang, China, and its related industry provides abundant employment opportunities and contributes positively to local economic development. Due to the high economic value and similar appearance of jujubes from different regions, there is a phenomenon of counterfeit products in the market. Therefore, it is necessary to trace the origin of jujubes to address these issues. In this study, we conducted traceability research on jujubes from four locations: Alaer, Hotan, Ruoqiang, and Zhangye. Near-infrared spectroscopy was used to extract non-destructive data from the jujubes for analysis. The extracted data was transformed into one-dimensional data, and six algorithms, including the Back Propagation Neural Network (BP), Radial Basis Function Neural Network(RBF), Convolutional Neural Networks (CNN), Long Short-Term Memory Network(LSTM), Support Vector Machine (SVM), and Random Forest (RF), were used for classification research on the obtained 4000 sets of one-dimensional data. The results showed that when sufficient data were available, the RBF, LSTM and CNN perform relatively better best with 93.50 %, 94.33 % and 94.25 % accuracy. The RF achieved an accuracy of 92.42 % and demonstrated good detection efficiency. However, the BP and SVM performed relatively poorly, with accuracies of 90.42 % and 80.42 % respectively. Considering the time-consuming nature of data collection for large datasets during the detection process, several sets of one-dimensional data were randomly selected for further experiments, through which 400 sets of data were found to be more prominent with 700 sets of data. The final experimental results demonstrate that, in the traceability detection of a small-scale dataset containing 400 instances, the CNN exhibits the best performance, achieving an accuracy of 86.67 %. The performance of the LSTM is slightly lower than that of the CNN, with an accuracy of 84.12 %. The accuracies of the BP, RBF, SVM, and RF were relatively lower at 82.5 %, 82.5 %, 74.12 %, and 74.18 % respectively. In the experiments with a dataset of 700 instances, the performance of CNN stands out prominently. In comparison to the CNN algorithm on the 400-instance dataset and the second-best LSTM algorithm, the accuracy, precision, recall, and F1-score have exhibited significant improvements by 53.13 %, 98.98 %, 481.43 %, and 140.36 %, respectively. The corresponding values are 0.9043, 0.9083, 0.9052, and 0.906. This study demonstrates the non-destructive traceability of jujube fruits using near-infrared spectroscopy data combined with neural network algorithms. Additionally, it reduces the need for additional preprocessing steps in data handling and achieves promising detection results. This research has positive implications for the traceability of jujube fruits and related crops. |
---|---|
AbstractList | [Display omitted]
•Offers a method utilizing near-infrared spectroscopy data and neural networks for red date origin traceability.•Analyze and compare the accuracy and efficiency of different algorithms with different amount of data.•The CNN algorithm demonstrated peak accuracy across different data volumes, reaching a maximum of 94.25 %.•At a small sample size of 700, CNN achieved an accuracy of 90.48 %, while other algorithms remained below 90 %.
Jujube is an important economic crop in Xinjiang, China, and its related industry provides abundant employment opportunities and contributes positively to local economic development. Due to the high economic value and similar appearance of jujubes from different regions, there is a phenomenon of counterfeit products in the market. Therefore, it is necessary to trace the origin of jujubes to address these issues. In this study, we conducted traceability research on jujubes from four locations: Alaer, Hotan, Ruoqiang, and Zhangye. Near-infrared spectroscopy was used to extract non-destructive data from the jujubes for analysis. The extracted data was transformed into one-dimensional data, and six algorithms, including the Back Propagation Neural Network (BP), Radial Basis Function Neural Network(RBF), Convolutional Neural Networks (CNN), Long Short-Term Memory Network(LSTM), Support Vector Machine (SVM), and Random Forest (RF), were used for classification research on the obtained 4000 sets of one-dimensional data. The results showed that when sufficient data were available, the RBF, LSTM and CNN perform relatively better best with 93.50 %, 94.33 % and 94.25 % accuracy. The RF achieved an accuracy of 92.42 % and demonstrated good detection efficiency. However, the BP and SVM performed relatively poorly, with accuracies of 90.42 % and 80.42 % respectively. Considering the time-consuming nature of data collection for large datasets during the detection process, several sets of one-dimensional data were randomly selected for further experiments, through which 400 sets of data were found to be more prominent with 700 sets of data. The final experimental results demonstrate that, in the traceability detection of a small-scale dataset containing 400 instances, the CNN exhibits the best performance, achieving an accuracy of 86.67 %. The performance of the LSTM is slightly lower than that of the CNN, with an accuracy of 84.12 %. The accuracies of the BP, RBF, SVM, and RF were relatively lower at 82.5 %, 82.5 %, 74.12 %, and 74.18 % respectively. In the experiments with a dataset of 700 instances, the performance of CNN stands out prominently. In comparison to the CNN algorithm on the 400-instance dataset and the second-best LSTM algorithm, the accuracy, precision, recall, and F1-score have exhibited significant improvements by 53.13 %, 98.98 %, 481.43 %, and 140.36 %, respectively. The corresponding values are 0.9043, 0.9083, 0.9052, and 0.906. This study demonstrates the non-destructive traceability of jujube fruits using near-infrared spectroscopy data combined with neural network algorithms. Additionally, it reduces the need for additional preprocessing steps in data handling and achieves promising detection results. This research has positive implications for the traceability of jujube fruits and related crops. |
ArticleNumber | 109122 |
Author | Li, Xu Wu, Cuiyun Wu, Jingming Shi, Ziyan Hou, Kaiyao Bai, Tiecheng He, Yufeng Huang, Jianxi Li, Xuecao |
Author_xml | – sequence: 1 givenname: Xu surname: Li fullname: Li, Xu organization: College of Information Engineering, Tarim University, Alar 843300, China – sequence: 2 givenname: Jingming surname: Wu fullname: Wu, Jingming organization: College of Information Engineering, Tarim University, Alar 843300, China – sequence: 3 givenname: Tiecheng orcidid: 0000-0003-0095-558X surname: Bai fullname: Bai, Tiecheng email: baitiecheng1983@163.com organization: College of Information Engineering, Tarim University, Alar 843300, China – sequence: 4 givenname: Cuiyun surname: Wu fullname: Wu, Cuiyun organization: The National and Local Joint Engineering Laboratory of High Efficiency and Superior-Quality Cultivation and Fruit Deep Processing Technology of Characteristic Fruit Trees in Southern Xinjiang, Alar 843300, China – sequence: 5 givenname: Yufeng surname: He fullname: He, Yufeng organization: College of Information Engineering, Tarim University, Alar 843300, China – sequence: 6 givenname: Jianxi surname: Huang fullname: Huang, Jianxi organization: College of Land Science and Technology, China Agricultural University, Beijing 100083, China – sequence: 7 givenname: Xuecao surname: Li fullname: Li, Xuecao organization: College of Land Science and Technology, China Agricultural University, Beijing 100083, China – sequence: 8 givenname: Ziyan surname: Shi fullname: Shi, Ziyan organization: College of Information Engineering, Tarim University, Alar 843300, China – sequence: 9 givenname: Kaiyao surname: Hou fullname: Hou, Kaiyao organization: College of Information Engineering, Tarim University, Alar 843300, China |
BookMark | eNpFkNtKAzEQhoNUcFt9Ay_2BVJz2N0kN4LUI5R6o96GbDIrWWpSkq3Qtze1glfDfPz8M3xzNAsxAELXlCwpod3NuLTxa2c-l4ywpiBFGTtDFZWCYUGJmKGqxCSmnVIXaJ7zSMqupKhQ_2GSh-lQ263J2Q_emsnHUJvgau8gTP8oDvW4H_c91L3J4OqCApiEfRiSSQXkHdgpxWzj7vBbQO_xarO5ROeD2Wa4-psL9P748LZ6xuvXp5fV3RoDbciEeTsYa6FVrueN6mgjO9uqVgkjLSG87QnruRDcdRZAgmNGtszx1jBiwBLBF-j21AvlyLeHpLP1ECw4n8pj2kWvKdFHY3rUJ2P6aEyfjPEfc9Vkow |
ContentType | Journal Article |
Copyright | 2024 |
Copyright_xml | – notice: 2024 |
DOI | 10.1016/j.compag.2024.109122 |
DatabaseTitleList | |
DeliveryMethod | fulltext_linktorsrc |
Discipline | Agriculture |
EISSN | 1872-7107 |
ExternalDocumentID | S0168169924005131 |
GroupedDBID | --K --M .DC .~1 0R~ 1B1 1RT 1~. 1~5 29F 4.4 457 4G. 5GY 5VS 6J9 7-5 71M 8P~ 9JM 9JN AACTN AAEDT AAEDW AAHBH AAIAV AAIKJ AAKOC AALCJ AALRI AAOAW AAQFI AAQXK AATLK AAXUO AAYFN ABBOA ABBQC ABFNM ABFRF ABGRD ABJNI ABKYH ABMAC ABMZM ABRWV ABXDB ACDAQ ACGFO ACGFS ACIUM ACIWK ACNNM ACRLP ACZNC ADBBV ADEZE ADJOM ADMUD ADQTV AEBSH AEFWE AEKER AENEX AEQOU AEXOQ AFKWA AFTJW AFXIZ AGHFR AGUBO AGYEJ AHHHB AHZHX AIALX AIEXJ AIKHN AITUG AJOXV AJRQY AKRWK ALMA_UNASSIGNED_HOLDINGS AMFUW AMRAJ ANZVX AOUOD ASPBG AVWKF AXJTR AZFZN BKOJK BLXMC BNPGV CS3 DU5 EBS EFJIC EJD EO8 EO9 EP2 EP3 FDB FEDTE FGOYB FIRID FNPLU FYGXN G-2 G-Q GBLVA GBOLZ HLV HLZ HVGLF HZ~ IHE J1W KOM LG9 LW9 M41 MO0 N9A O-L O9- OAUVE OZT P-8 P-9 P2P PC. PQQKQ Q38 R2- RIG ROL RPZ SAB SBC SDF SDG SES SEW SNL SPC SPCBC SSA SSH SSV SSZ T5K UHS UNMZH WUQ Y6R ~G- ~KM |
ID | FETCH-LOGICAL-e140t-35facce59db34961486c59597a8c0035b02b3773d6cee8ed2a852d35a20aec073 |
IEDL.DBID | AIKHN |
ISSN | 0168-1699 |
IngestDate | Tue Jun 18 08:50:31 EDT 2024 |
IsPeerReviewed | true |
IsScholarly | true |
Keywords | Jujube CNN Origin traceability Near-infrared spectroscopy |
Language | English |
LinkModel | DirectLink |
MergedId | FETCHMERGED-LOGICAL-e140t-35facce59db34961486c59597a8c0035b02b3773d6cee8ed2a852d35a20aec073 |
ORCID | 0000-0003-0095-558X |
ParticipantIDs | elsevier_sciencedirect_doi_10_1016_j_compag_2024_109122 |
PublicationCentury | 2000 |
PublicationDate | August 2024 |
PublicationDateYYYYMMDD | 2024-08-01 |
PublicationDate_xml | – month: 08 year: 2024 text: August 2024 |
PublicationDecade | 2020 |
PublicationTitle | Computers and electronics in agriculture |
PublicationYear | 2024 |
Publisher | Elsevier B.V |
Publisher_xml | – name: Elsevier B.V |
References | Li, Zhang, Xue, Sun, Ren (b0095) 2022; 12 Huang, F., Zhang, S., & Zhao, H. (2012). Paper presented at the International conference on machine learning. Cang, Yan, Duan, Yan, Zhang, Tan, Gao (b0020) 2023; 236 Wu, Chen, Yi, Rogers, Bian, Lin, Zhou (b0190) 2023; 616 Li, Jiao, Xu, Wu, Forsberg, Peng, He (b0085) 2022; 279 Liang, Sun, Zhang, He, Qiu (b0105) 2022; 62 Liu, Wang, Wang, Liu, Zhao, Zhao, Wang (b0110) 2020 Park, Sandberg (b0140) 1991; 3 Koley, Kaur, Nagal, Walia, Jaggi (b0075) 2016; 9 Vriezen, Plishka, Cranfield (b0170) 2023; 125 Cheng, J., Dong, L., & Lapata, M. (2016). Long short-term memory-networks for machine reading. He, Wang, Zhang, Wang, Ou, Guo (b0045) 2022; 111 Liang, Ma, Bao, Xu, Zhang, Zou, Chu (b0100) 2023 Guo, Zheng, Xu, Ju, Zheng, You, Gu (b0040) 2021; 44 Bin, Wang, Liu, He, Zhao, Fang, Liu (b0010) 2022; 106 Ren, Wang, Ning, Xu, Wang, Xing, Zhang (b0150) 2013; 53 Lu, Zhao, Luo, Wang, Wang (b0125) 2021; 186 Pareek (b0135) 2013 Li, J., Cheng, J.-h., Shi, J.-y., & Huang, F. (2012). Suthaharan, S., & Suthaharan, S. (2016). Support vector machine. Liu, Yang, Wang, Zhang (b0115) 2021; 258 Qian, Ruiz-Garcia, Fan, Villalba, McCarthy, Zhang, Wu (b0145) 2020; 99 Ruan, Han, Kennedy, Jiang, Cao, Zhang, Wang (b0155) 2022; 3 Li, Wang (b0090) 2018; 140 Paper presented at the Advances in Computer Science and Information Engineering: Volume 2. Lu, Bao, Mo, Ni, Chen (b0120) 2021; 22 Yu, Si, Hu, Zhang (b0205) 2019; 31 Yan, Song, Wang, Fang, Peng, Wu, Xue (b0200) 2021; 352 Ju, Zheng, Xu, Guo, Zheng, Lin (b0060) 2022 Zhang, Dai, Zhang, Zheng, Song, Chen, Huang (b0210) 2023; 12 Tan, M., & Le, Q. (2019). Meng, Yuan, Teng, Liu (b0130) 2021; 15 Wang, He, Zhao, Liu, Fan, Tian, Rogers (b0175) 2020; 92 Belgiu, Drăguţ (b0005) 2016; 114 Kamboj, Guha, Mishra (b0065) 2022; 48 Paper presented at the Computer and Computing Technologies in Agriculture V: 5th IFIP TC 5/SIG 5.1 Conference, CCTA 2011, Beijing, China, October 29-31, 2011, Proceedings, Part I 5. Yan, Ren, Tschannerl, Zhao, Harrison, Jack (b0195) 2021; 70 Zhang, Hu, Zhao (b0215) 2020; 229 . Jamwal, Kumari, Kelly, Cannavan, Singh (b0055) 2022; 5 Dou, Zhang, Yang, Wang, Yu, Yue, Zhang (b0030) 2022 Wang, Shen, Liu, Wei, Zhang, Li, Zhang (b0180) 2022; 182 Buscema (b0015) 1998; 33 Gu, Wang, Kuen, Ma, Shahroudy, Shuai, Cai (b0035) 2018; 77 Kiani, Yazdanpanah, Feizy (b0070) 2023; 131 Wang, Sheng, Li, Agyekum, Hassan, Chen (b0185) 2020; 43 207-235. |
References_xml | – volume: 48 start-page: 576 year: 2022 end-page: 582 ident: b0065 article-title: Comparison of PLSR, MLR, SVM regression methods for determination of crude protein and carbohydrate content in stored wheat using near Infrared spectroscopy publication-title: Mater. Today:. Proc. contributor: fullname: Mishra – volume: 22 start-page: 431 year: 2021 end-page: 449 ident: b0120 article-title: Research advances in bioactive components and health benefits of jujube (Ziziphus jujuba Mill.) fruit publication-title: J. Zhejiang Univ.-Sci. B contributor: fullname: Chen – volume: 182 year: 2022 ident: b0180 article-title: Microclimate, yield, and income of a jujube–cotton agroforestry system in Xinjiang, China publication-title: Indus. Crops Prod. contributor: fullname: Zhang – volume: 279 year: 2022 ident: b0085 article-title: Determination of geographic origins and types of Lindera aggregata samples using a portable short-wave infrared hyperspectral imager publication-title: Spectrochim. Acta A Mol. Biomol. Spectrosc. contributor: fullname: He – volume: 53 start-page: 822 year: 2013 end-page: 826 ident: b0150 article-title: Quantitative analysis and geographical traceability of black tea using Fourier transform near-infrared spectroscopy (FT-NIRS) publication-title: Food Res. Int. contributor: fullname: Zhang – start-page: e21779 year: 2022 ident: b0030 article-title: Mass spectrometry in food authentication and origin traceability publication-title: Mass Spectrom. Rev. contributor: fullname: Zhang – volume: 33 start-page: 233 year: 1998 end-page: 270 ident: b0015 article-title: Back propagation neural networks publication-title: Subst. Use Misuse contributor: fullname: Buscema – volume: 352 year: 2021 ident: b0200 article-title: Detection of acacia honey adulteration with high fructose corn syrup through determination of targeted α-Dicarbonyl compound using ion mobility-mass spectrometry coupled with UHPLC-MS/MS publication-title: Food Chem. contributor: fullname: Xue – volume: 140 start-page: 38 year: 2018 end-page: 46 ident: b0090 article-title: Synergistic strategy for the geographical traceability of wild Boletus tomentipes by means of data fusion analysis publication-title: Microchem. J. contributor: fullname: Wang – volume: 3 year: 2022 ident: b0155 article-title: A review on polysaccharides from jujube and their pharmacological activities publication-title: Carbohydrate Polym. Technol. Appl. contributor: fullname: Wang – volume: 114 start-page: 24 year: 2016 end-page: 31 ident: b0005 article-title: Random forest in remote sensing: A review of applications and future directions publication-title: ISPRS J. Photogramm. Remote Sens. contributor: fullname: Drăguţ – volume: 5 start-page: 545 year: 2022 end-page: 552 ident: b0055 article-title: Assessment of geographical origin of virgin coconut oil using inductively coupled plasma mass spectrometry along with multivariate chemometrics publication-title: Curr. Res. Food Sci. contributor: fullname: Singh – volume: 99 start-page: 402 year: 2020 end-page: 412 ident: b0145 article-title: Food traceability system from governmental, corporate, and consumer perspectives in the European Union and China: A comparative review publication-title: Trends Food Sci. Technol. contributor: fullname: Wu – volume: 111 year: 2022 ident: b0045 article-title: Rapid determination of reducing sugar content in sweet potatoes using NIR spectra publication-title: J. Food Compos. Anal. contributor: fullname: Guo – volume: 236 start-page: 224 year: 2023 end-page: 237 ident: b0020 article-title: Jujube quality grading using a generative adversarial network with an imbalanced data set publication-title: Biosyst. Eng. contributor: fullname: Gao – volume: 70 start-page: 1 year: 2021 end-page: 15 ident: b0195 article-title: Nondestructive phenolic compounds measurement and origin discrimination of peated barley malt using near-infrared hyperspectral imagery and machine learning publication-title: IEEE Trans. Instrum. Meas. contributor: fullname: Jack – volume: 3 start-page: 246 year: 1991 end-page: 257 ident: b0140 article-title: Universal approximation using radial-basis-function networks publication-title: Neural Comput. contributor: fullname: Sandberg – volume: 62 start-page: 2963 year: 2022 end-page: 2984 ident: b0105 article-title: Advances in infrared spectroscopy combined with artificial neural network for the authentication and traceability of food publication-title: Crit. Rev. Food Sci. Nutr. contributor: fullname: Qiu – volume: 15 start-page: 4150 year: 2021 end-page: 4165 ident: b0130 article-title: Deep learning for fine-grained classification of jujube fruit in the natural environment publication-title: J. Food Meas. Charact. contributor: fullname: Liu – volume: 9 start-page: S1044 year: 2016 end-page: S1052 ident: b0075 article-title: Antioxidant activity and phenolic content in genotypes of Indian jujube (Zizyphus mauritiana Lamk.) publication-title: Arab. J. Chem. contributor: fullname: Jaggi – year: 2023 ident: b0100 article-title: Imaging VOC distribution and tracing emission sources in surface water by a mobile shipborne spray inlet proton transfer reaction mass spectrometry publication-title: J. Clean. Prod. contributor: fullname: Chu – volume: 31 start-page: 1235 year: 2019 end-page: 1270 ident: b0205 article-title: A review of recurrent neural networks: LSTM cells and network architectures publication-title: Neural Comput. contributor: fullname: Zhang – volume: 258 year: 2021 ident: b0115 article-title: Multi-platform integration based on NIR and UV–Vis spectroscopies for the geographical traceability of the fruits of Amomum tsao-ko publication-title: Spectrochim. Acta A Mol. Biomol. Spectrosc. contributor: fullname: Zhang – volume: 186 year: 2021 ident: b0125 article-title: Design of a winter-jujube grading robot based on machine vision publication-title: Comput. Electron. Agric. contributor: fullname: Wang – volume: 229 year: 2020 ident: b0215 article-title: Developing product recall capability through supply chain quality management publication-title: Int. J. Prod. Econ. contributor: fullname: Zhao – start-page: 463 year: 2013 end-page: 470 ident: b0135 article-title: Nutritional composition of jujube fruit publication-title: Emirates J. Food Agric. contributor: fullname: Pareek – volume: 43 start-page: e13411 year: 2020 ident: b0185 article-title: Development of near-infrared online grading device for long jujube publication-title: J. Food Process Eng. contributor: fullname: Chen – volume: 125 start-page: 1631 year: 2023 end-page: 1665 ident: b0170 article-title: Consumer willingness to pay for traceable food products: a scoping review publication-title: Br. Food J. contributor: fullname: Cranfield – volume: 92 year: 2020 ident: b0175 article-title: Modeling of stable isotope and multi-element compositions of jujube (Ziziphus jujuba Mill.) for origin traceability of protected geographical indication (PGI) products in Xinjiang, China publication-title: J. Food Compos. Anal. contributor: fullname: Rogers – volume: 131 year: 2023 ident: b0070 article-title: Geographical origin differentiation and quality determination of saffron using a portable Hyperspectral imaging system publication-title: Infrared Phys. Technol. contributor: fullname: Feizy – volume: 616 year: 2023 ident: b0190 article-title: Origin traceability of bottled mineral water imported into China using chemical and stable isotope fingerprints publication-title: J. Hydrol. contributor: fullname: Zhou – start-page: 1 year: 2022 end-page: 14 ident: b0060 article-title: Classification of jujube defects in small data sets based on transfer learning publication-title: Neural Comput. & Applic. contributor: fullname: Lin – volume: 12 start-page: 717 year: 2022 ident: b0095 article-title: A fast neural network based on attention mechanisms for detecting field flat jujube publication-title: Agriculture contributor: fullname: Ren – volume: 77 start-page: 354 year: 2018 end-page: 377 ident: b0035 article-title: Recent advances in convolutional neural networks publication-title: Pattern Recogn. contributor: fullname: Cai – volume: 44 start-page: e13620 year: 2021 ident: b0040 article-title: Quality grading of jujubes using composite convolutional neural networks in combination with RGB color space segmentation and deep convolutional generative adversarial networks publication-title: J. Food Process Eng. contributor: fullname: Gu – volume: 106 year: 2022 ident: b0010 article-title: Geographical origin traceability of muskmelon from Xinjiang province using stable isotopes and multi-elements with chemometrics publication-title: J. Food Compos. Anal. contributor: fullname: Liu – volume: 12 start-page: 499 year: 2023 ident: b0210 article-title: A study on origin traceability of white tea (White Peony) based on near-infrared spectroscopy and machine learning algorithms publication-title: Foods contributor: fullname: Huang – start-page: 7 year: 2020 ident: b0110 article-title: The historical and current research progress on jujube–a superfruit for the future contributor: fullname: Wang |
SSID | ssj0016987 |
Score | 2.454535 |
Snippet | [Display omitted]
•Offers a method utilizing near-infrared spectroscopy data and neural networks for red date origin traceability.•Analyze and compare the... |
SourceID | elsevier |
SourceType | Publisher |
SubjectTerms | CNN Jujube Near-infrared spectroscopy Origin traceability |
Title | Variety classification and identification of jujube based on near-infrared spectroscopy and 1D-CNN |
URI | https://dx.doi.org/10.1016/j.compag.2024.109122 |
Volume | 223 |
hasFullText | 1 |
inHoldings | 1 |
isFullTextHit | |
isPrint | |
link | http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwnV07T8MwELZKu8CAeIpn5YE1tE7i1B6rQlVAZIGiblH8qtohrap06MJv5y5xKlgZc5Kj6LN9d1_83ZmQB2dNP5KxhJ0m4iAOlQ6kMNgZ0fJca8u1w_-Q72kymcavMz5rkVFTC4OySu_7a59eeWtv6Xk0e-vFovcByYpgiZSoguQMa6k7EI5C0Sad4cvbJN0fJiRS1FXTCRAmGNBU0FUyr0rqPQeiGMbYWonhLbr7sPQr1IxPyLHPEemw_oxT0rLFGTkazje-T4Y9J-oLOW65oxqzX5T7VAjTvDB0YbwCqDatHF1ul1tlKUYsQ8FUwPIOYGltUH1Oq2JLbGq5Wu-qF7CnYJSmF2Q6fv4cTQJ_XUJggSWVQcRdha40CrvAA89JNJdAGHKh8cBQ9UMVDQaRSSAwCmvCXPDQRDwP-7nVsNUvSbtYFfaK0MgAa9aMmdhp2OEc0wYHzMK5SBnDxDUZNBBlf2YrA0ecNcKxZVaDmyG4WQ3uzb9H3pJDfKrFd3ekXW629h4SglJ1ycHjN-v6af8BmZu2kw |
link.rule.ids | 315,783,787,4509,24128,27936,27937,45597,45691 |
linkProvider | Elsevier |
linkToHtml | http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwnV05b8IwFLYQDG2Hqqd610PXCHI42COiRaFAlkLFFsUXgiEgFAb-fd9LDGrXro4cRZ_9ji_-3jMhb9boTigiAZbGIy8KpPIE19gZ0bBcKcOUxf-QkzROZtHnnM0bpH-ohUFZpfP9tU-vvLUbaTs025vlsv0FyQr3YyFQBcl8rKVuQTYgwDpbveEoSY-HCbHgddV0DIQJJhwq6CqZVyX1XgBRDCJsreTjLbrHsPQr1AwuyLnLEWmv_oxL0jDFFTnrLbauT4a5JvIbOW65pwqzX5T7VAjTvNB0qZ0CqB5aW7rarXbSUIxYmsJQAdvbg621RfU5rYotsanlerOvXuC_e_00vSGzwce0n3juugTPAEsqvZDZCl2hJXaBB54TKyaAMORc4YGh7AQy7HZDHUNg5EYHOWeBDlkedHKjwNRvSbNYF-aO0FADa1a-ryOrwMIZpg0WmIW1odTa5_eke4Ao-7NaGTji7CAcW2U1uBmCm9XgPvx75is5SaaTcTYepqNHcopPaiHeE2mW2515huSglC9u8X8ACmu4hw |
openUrl | ctx_ver=Z39.88-2004&ctx_enc=info%3Aofi%2Fenc%3AUTF-8&rfr_id=info%3Asid%2Fsummon.serialssolutions.com&rft_val_fmt=info%3Aofi%2Ffmt%3Akev%3Amtx%3Ajournal&rft.genre=article&rft.atitle=Variety+classification+and+identification+of+jujube+based+on+near-infrared+spectroscopy+and+1D-CNN&rft.jtitle=Computers+and+electronics+in+agriculture&rft.au=Li%2C+Xu&rft.au=Wu%2C+Jingming&rft.au=Bai%2C+Tiecheng&rft.au=Wu%2C+Cuiyun&rft.date=2024-08-01&rft.pub=Elsevier+B.V&rft.issn=0168-1699&rft.eissn=1872-7107&rft.volume=223&rft_id=info:doi/10.1016%2Fj.compag.2024.109122&rft.externalDocID=S0168169924005131 |
thumbnail_l | http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/lc.gif&issn=0168-1699&client=summon |
thumbnail_m | http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/mc.gif&issn=0168-1699&client=summon |
thumbnail_s | http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/sc.gif&issn=0168-1699&client=summon |