Detection of Apple Proliferation Disease Using Hyperspectral Imaging and Machine Learning Techniques

被引:0
|
作者
Knauer, Uwe [1 ]
Warnemünde, Sebastian [2 ]
Menz, Patrick [2 ]
Thielert, Bonito [2 ]
Klein, Lauritz [2 ]
Holstein, Katharina [3 ]
Runne, Miriam [4 ]
Jarausch, Wolfgang [4 ]
机构
[1] Department of Agriculture, Ecotrophology and Landscape Development, Anhalt University of Applied Sciences, Bernburg,06406, Germany
[2] Cognitive Processes and Systems, Fraunhofer Institute for Factory Operation and Automation IFF, Magdeburg,39106, Germany
[3] Department of Computer Science and Languages, Anhalt University of Applied Sciences, Köthen,06366, Germany
[4] RLP AgroScience, Neustadt an der Weinstrasse,67435, Germany
关键词
Candida;
D O I
10.3390/s24237774
中图分类号
学科分类号
摘要
Apple proliferation is among the most important diseases in European fruit production. Early and reliable detection enables farmers to respond appropriately and to prevent further spreading of the disease. Traditional phenotyping approaches by human observers consider multiple symptoms, but these are difficult to measure automatically in the field. Therefore, the potential of hyperspectral imaging in combination with data analysis by machine learning algorithms was investigated to detect the symptoms solely based on the spectral signature of collected leaf samples. In the growing seasons 2019 and 2020, a total of 1160 leaf samples were collected. Hyperspectral imaging with a dual camera setup in spectral bands from 400 nm to 2500 nm was accompanied with subsequent PCR analysis of the samples to provide reference data for the machine learning approaches. Data processing consists of preprocessing for segmentation of the leaf area, feature extraction, classification and subsequent analysis of relevance of spectral bands. The results show that imaging multiple leaves of a tree enhances detection results, that spectral indices are a robust means to detect the diseased trees, and that the potentials of the full spectral range can be exploited using machine learning approaches. Classification models like rRBF achieved an accuracy of 0.971 in a controlled environment with stratified data for a single variety. Combined models for multiple varieties from field test samples achieved classification accuracies of 0.731. Including spatial distribution of spectral data further improves the results to 0.751. Prediction of qPCR results by regression based on spectral data achieved RMSE of 14.491 phytoplasma per plant cell. © 2024 by the authors.
引用
收藏
相关论文
共 50 条
  • [31] Estimation of Apple Leaf Nitrogen Concentration Using Hyperspectral Imaging-Based Wavelength Selection and Machine Learning
    Jang, Sihyeong
    Han, Jeomhwa
    Cho, Junggun
    Jung, Jaehoon
    Lee, Seulki
    Lee, Dongyong
    Kim, Jingook
    HORTICULTURAE, 2024, 10 (01)
  • [32] The feasibility of early detection and grading of apple bruises using hyperspectral imaging
    Tan, Wenyi
    Sun, Laijun
    Yang, Fei
    Che, Wenkai
    Ye, Dandan
    Zhang, Dan
    Zou, Borui
    JOURNAL OF CHEMOMETRICS, 2018, 32 (10)
  • [33] Visual detection of apple bruises using AdaBoost algorithm and hyperspectral imaging
    Zhang, Meng
    Li, Guanghui
    INTERNATIONAL JOURNAL OF FOOD PROPERTIES, 2018, 21 (01) : 1598 - 1607
  • [34] Estimation of Anthocyanins in Apple Leaves Based on Ground Hyperspectral Imaging and Machine Learning Models
    Zhang, Yu
    Zou, Mi
    Li, Yanjun
    Chang, Qingrui
    Chen, Xing
    Dai, Zhiyong
    Yuan, Weihao
    AGRONOMY-BASEL, 2025, 15 (01):
  • [35] Application of Machine Learning for Disease Detection Tasks in Olive Trees Using Hyperspectral Data
    Navrozidis, Ioannis
    Pantazi, Xanthoula Eirini
    Lagopodi, Anastasia
    Bochtis, Dionysios
    Alexandridis, Thomas K.
    REMOTE SENSING, 2023, 15 (24)
  • [36] Detection of Apple Sucrose Concentration Based on Fluorescence Hyperspectral Image System and Machine Learning
    Zhan, Chunyi
    Mao, Hongyi
    Fan, Rongsheng
    He, Tanggui
    Qing, Rui
    Zhang, Wenliang
    Lin, Yi
    Li, Kunyu
    Wang, Lei
    Xia, Tie'en
    Wu, Youli
    Kang, Zhiliang
    FOODS, 2024, 13 (22)
  • [37] Using visible and NIR hyperspectral imaging and machine learning for nondestructive detection of nutrient contents in sorghum
    Wu, Kai
    Zhang, Zilin
    He, Xiuhan
    Li, Gangao
    Zheng, Decong
    Li, Zhiwei
    SCIENTIFIC REPORTS, 2025, 15 (01):
  • [38] Machine learning based framework for the detection of mushroom browning using a portable hyperspectral imaging system
    Yang, Kai
    Zhao, Ming
    Argyropoulos, Dimitrios
    POSTHARVEST BIOLOGY AND TECHNOLOGY, 2025, 219
  • [39] Identifying the Restoration Stages of Degraded Alpine Meadow Patches Using Hyperspectral Imaging and Machine Learning Techniques
    Luo, Wei
    Wang, Lu
    Cui, Lulu
    Zheng, Min
    Li, Xilai
    Li, Chengyi
    AGRICULTURE-BASEL, 2024, 14 (07):
  • [40] Skin Melanoma Detection Based on Hyperspectral Imaging and Deep Learning Techniques
    Chen, Jiewen
    Wang, Xiwen
    Wu, Qian
    Mo, Jianhua
    OPTICS IN HEALTH CARE AND BIOMEDICAL OPTICS X, 2020, 11553