A smart data-driven rapid method to recognize the strawberry maturity

被引:23
|
作者
Yue X.-Q. [1 ]
Shang Z.-Y. [1 ]
Yang J.-Y. [1 ]
Huang L. [1 ]
Wang Y.-Q. [1 ]
机构
[1] College of Information and Electrical Engineering, China Agricultural University, Beijing
关键词
Absorbance; Multiple nonlinear regression; Rapid recognition; Smartphone; Strawberry maturity;
D O I
10.1016/j.inpa.2019.10.005
中图分类号
学科分类号
摘要
In recent years, there have been many studies on the recognition of strawberry maturity, but there are still problems such as low recognition accuracy and expensive experimental instruments. These factors make their methods difficult for farmers to use. To solve these problems, we developed a fast, non-destructive, accurate and convenient method for strawberry maturity identification using smartphones. In this paper, strawberry maturity is divided into three levels: mature, nearly-mature and immature. Considering the actual strawberry harvest process and postharvest handling, we focus on the differentiation between the mature and the nearly-mature ones to help farmers reduce possible damage in transit and improve profitability. We obtained the images of strawberries with different maturities at 535 nm and 670 nm wavelengths through a smartphone and got absorbance data by image processing based on the region of interest. The absorbance data were used to establish three maturity recognition models—i.e., multivariate linear, multivariate nonlinear and SoftMax regression classifier. The results showed that the multivariate nonlinear model had the highest identification accuracy (which is over 94%) in the greenhouse. Therefore, this method has considerable potential as a means for rapid recognition of strawberry maturity. © 2019 China Agricultural University
引用
收藏
页码:575 / 584
页数:9
相关论文
共 50 条
  • [21] Data-Driven Continuous Evolution of Smart Systems
    Bosch, Jan
    Olsson, Helena Holmstrom
    PROCEEDINGS OF 2016 IEEE/ACM 11TH INTERNATIONAL SYMPOSIUM ON SOFTWARE ENGINEERING FOR ADAPTIVE AND SELF-MANAGING SYSTEMS (SEAMS), 2016, : 28 - 34
  • [22] Smart systems and data-driven services in healthcare
    Izonin, Ivan
    Kutucu, Hakan
    Singh, Krishna Kant
    COMPUTERS IN BIOLOGY AND MEDICINE, 2023, 158
  • [23] A data-driven scheduling approach to smart manufacturing
    Alejandro Rossit, Daniel
    Tohme, Fernando
    Frutos, Mariano
    JOURNAL OF INDUSTRIAL INFORMATION INTEGRATION, 2019, 15 : 69 - 79
  • [24] Editorial: Data-Driven Solutions for Smart Grids
    Milano, F.
    Vaccaro, A.
    Manana, M.
    FRONTIERS IN BIG DATA, 2021, 4
  • [25] A Reliable Data-Driven Control Method for Planting Temperature in Smart Agricultural Systems
    Zhang, Hu
    Zhang, Liangliang
    IEEE ACCESS, 2023, 11 : 38182 - 38193
  • [26] Research on Data-driven Real-time Scheduling Method of Smart Workshop
    Gu W.
    Li Y.
    Liu S.
    Yuan M.
    Pei F.
    Jixie Gongcheng Xuebao/Journal of Mechanical Engineering, 2023, 59 (12): : 47 - 61
  • [27] On the data-driven COS method
    Leitao, Alvaro
    Oosterlee, Cornelis W.
    Ortiz-Gracia, Luis
    Bohte, Sander M.
    APPLIED MATHEMATICS AND COMPUTATION, 2018, 317 : 68 - 84
  • [28] Smart manufacturing starts with data-driven DTMs
    Hartmann, Robert
    Gunzert, Michael
    Control Engineering, 2021, 68 (04) : 20 - 23
  • [29] A theory and data-driven method for rapid bottom hole pressure calculation in UGS
    Li, Yang
    Guo, Haiwei
    Gong, Xianfeng
    Lu, Naixin
    Zhang, Kairui
    SCIENTIFIC REPORTS, 2025, 15 (01):
  • [30] A Data-Driven Model for Rapid CII Prediction
    Muehmer, Markus
    La Ferlita, Alessandro
    Geber, Evangelos
    Ehlers, Soeren
    Di Nardo, Emanuel
    El Moctar, Ould
    Ciaramella, Angelo
    JOURNAL OF MARINE SCIENCE AND ENGINEERING, 2024, 12 (11)