Development of a deep-learning phenotyping tool for analyzing image-based strawberry phenotypes

被引:0
|
作者
Ndikumana, Jean Nepo [1 ,2 ]
Lee, Unseok [1 ]
Yoo, Ji Hye [1 ]
Yeboah, Samuel [1 ,2 ]
Park, Soo Hyun [1 ]
Lee, Taek Sung [1 ]
Yeoung, Young Rog [2 ]
Kim, Hyoung Seok [1 ]
机构
[1] Korea Inst Sci & Technol KIST, Smart Farm Res Ctr, Kangnung, South Korea
[2] Gangneung Wonju Natl Univ, Dept Plant Sci, Kangnung, South Korea
来源
关键词
deep learning; strawberry; phenotyping; YOLOv4; U-net; PLANT-GROWTH; SIZE; ARCHITECTURE; PHOTOPERIOD;
D O I
10.3389/fpls.2024.1418383
中图分类号
Q94 [植物学];
学科分类号
071001 ;
摘要
Introduction In strawberry farming, phenotypic traits (such as crown diameter, petiole length, plant height, flower, leaf, and fruit size) measurement is essential as it serves as a decision-making tool for plant monitoring and management. To date, strawberry plant phenotyping has relied on traditional approaches. In this study, an image-based Strawberry Phenotyping Tool (SPT) was developed using two deep-learning (DL) architectures, namely "YOLOv4" and "U-net" integrated into a single system. We aimed to create the most suitable DL-based tool with enhanced robustness to facilitate digital strawberry plant phenotyping directly at the natural scene or indirectly using captured and stored images.Methods Our SPT was developed primarily through two steps (subsequently called versions) using image data with different backgrounds captured with simple smartphone cameras. The two versions (V1 and V2) were developed using the same DL networks but differed by the amount of image data and annotation method used during their development. For V1, 7,116 images were annotated using the single-target non-labeling method, whereas for V2, 7,850 images were annotated using the multitarget labeling method.Results The results of the held-out dataset revealed that the developed SPT facilitates strawberry phenotype measurements. By increasing the dataset size combined with multitarget labeling annotation, the detection accuracy of our system changed from 60.24% in V1 to 82.28% in V2. During the validation process, the system was evaluated using 70 images per phenotype and their corresponding actual values. The correlation coefficients and detection frequencies were higher for V2 than for V1, confirming the superiority of V2. Furthermore, an image-based regression model was developed to predict the fresh weight of strawberries based on the fruit size (R2 = 0.92).Discussion The results demonstrate the efficiency of our system in recognizing the aforementioned six strawberry phenotypic traits regardless of the complex scenario of the environment of the strawberry plant. This tool could help farmers and researchers make accurate and efficient decisions related to strawberry plant management, possibly causing increased productivity and yield potential.
引用
收藏
页数:16
相关论文
共 50 条
  • [11] Challenges in building image-based diagnostic support deep-learning algorithm for acute burns
    Boissin, C.
    Fransen, J.
    Huss, F.
    Wallis, L.
    Allorto, N.
    Laflamme, L.
    Lundin, J.
    EUROPEAN JOURNAL OF PUBLIC HEALTH, 2019, 29 : 53 - 53
  • [12] Robotic Strawberry Flower Treatment Based on Deep-Learning Vision
    Vuletic, Jelena
    Polic, Marsela
    Orsag, Matko
    HUMAN-FRIENDLY ROBOTICS, HFR, 2022, 2023, 26 : 189 - 204
  • [13] Deep machine learning provides state-of-the-art performance in image-based plant phenotyping
    Pound, Michael P.
    Atkinson, Jonathan A.
    Townsend, Alexandra J.
    Wilson, Michael H.
    Griffiths, Marcus
    Jackson, Aaron S.
    Bulat, Adrian
    Tzimiropoulos, Georgios
    Wells, Darren M.
    Murchie, Erik H.
    Pridmore, Tony P.
    French, Andrew P.
    GIGASCIENCE, 2017, 6 (10):
  • [14] A deep learning approach for RGB image-based powdery mildew disease detection on strawberry leaves
    Shin, Jaemyung
    Chang, Young K.
    Heung, Brandon
    Nguyen-Quang, Tri
    Price, Gordon W.
    Al-Mallahi, Ahmad
    COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2021, 183
  • [15] Image-based deep-learning prediction of future FDG PET patterns in aging and dementia.
    Komori, Seisaku
    Kimura, Yuichi
    Hatano, Kazuya
    Kosugi, Tsuyoshi
    Nishizawa, Sadahiko
    Okada, Hiroyuki
    Minoshima, Satoshi
    JOURNAL OF NUCLEAR MEDICINE, 2019, 60
  • [16] A Digital Image-Based Phenotyping Platform for Analyzing Root Shape Attributes in Carrot
    Brainard, Scott H.
    Bustamante, Julian A.
    Dawson, Julie C.
    Spalding, Edgar P.
    Goldman, Irwin L.
    FRONTIERS IN PLANT SCIENCE, 2021, 12
  • [17] Image-based plant phenotyping with incremental learning and active contours
    Minervini, Massimo
    Abdelsamea, Mohammed M.
    Tsaftaris, Sotirios A.
    ECOLOGICAL INFORMATICS, 2014, 23 : 35 - 48
  • [18] Robotic data acquisition with deep learning enables cell image-based prediction of transcriptomic phenotypes
    Jin, Jianshi
    Ogawa, Taisaku
    Hojo, Nozomi
    Kryukov, Kirill
    Shimizu, Kenji
    Ikawa, Tomokatsu
    Imanishi, Tadashi
    Okazaki, Taku
    Shiroguchi, Katsuyuki
    PROCEEDINGS OF THE NATIONAL ACADEMY OF SCIENCES OF THE UNITED STATES OF AMERICA, 2022, 120 (01)
  • [19] Deep-learning models for image-based gynecological cancer diagnosis: a systematic review and meta- analysis
    Taddese, Asefa Adimasu
    Tilahun, Binyam Chakilu
    Awoke, Tadesse
    Atnafu, Asmamaw
    Mamuye, Adane
    Mengiste, Shegaw Anagaw
    FRONTIERS IN ONCOLOGY, 2024, 13
  • [20] Comparative Study of Traditional and Deep-Learning Denoising Approaches for Image-Based Petrophysical Characterization of Porous Media
    Tawfik, Miral S.
    Adishesha, Amogh Subbakrishna
    Hsi, Yuhan
    Purswani, Prakash
    Johns, Russell T.
    Shokouhi, Parisa
    Huang, Xiaolei
    Karpyn, Zuleima T.
    FRONTIERS IN WATER, 2022, 3