Interactive machine learning for soybean seed and seedling quality classification

被引:0
|
作者
André Dantas de Medeiros
Nayara Pereira Capobiango
José Maria da Silva
Laércio Junio da Silva
Clíssia Barboza da Silva
Denise Cunha Fernandes dos Santos Dias
机构
[1] Federal University of Viçosa,Agronomy Department
[2] University of Sao Paulo (USP),Center for Nuclear Energy in Agriculture (CENA)
来源
关键词
D O I
暂无
中图分类号
学科分类号
摘要
New computer vision solutions combined with artificial intelligence algorithms can help recognize patterns in biological images, reducing subjectivity and optimizing the analysis process. The aim of this study was to propose an approach based on interactive and traditional machine learning methods to classify soybean seeds and seedlings according to their appearance and physiological potential. In addition, we correlated the appearance of seeds to their physiological performance. Images of soybean seeds and seedlings were used to develop models using low-cost approaches and free-access software. The models developed showed high performance, with overall accuracy reaching 0.94 for seeds and seedling classification. The high precision of the models that were developed based on interactive and traditional machine learning demonstrated that the method can easily be used to classify soybean seeds according to their appearance, as well as to classify soybean seedling vigor quickly and non-subjectively. The appearance of soybean seeds is strongly correlated with their physiological performance.
引用
收藏
相关论文
共 50 条
  • [21] Mushroom spawn quality classification with machine learning
    Tongcham, Phongsakhon
    Supa, Pichaya
    Pornwongthong, Peerapong
    Prasitmeeboon, Pitcha
    COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2020, 179
  • [22] Thread Quality Classification of a Tapping Machine Based on Machine Learning
    Wang, Chiao-Sheng
    Kao, I-Hsi
    Hsu, Ya-Wen
    Lin, Tsung-Chun
    Tsay, Der-Min
    Perng, Jau-Woei
    IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 2021, 70
  • [23] Thread Quality Classification of a Tapping Machine Based on Machine Learning
    Wang, Chiao-Sheng
    Kao, I-Hsi
    Hsu, Ya-Wen
    Lin, Tsung-Chun
    Tsay, Der-Min
    Perng, Jau-Woei
    IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 2021, 70
  • [24] DEEP LEARNING BASED SEED CLASSIFICATION AND QUALITY DETECTION
    Rao, B. Srinivasa
    Sowmya, DoddaLakshmi
    Madhu, Kotnani
    INTERNATIONAL JOURNAL OF EARLY CHILDHOOD SPECIAL EDUCATION, 2022, 14 (04) : 1339 - 1349
  • [25] Soybean Seed Aging and Environmental Factors on Seedling Growth
    Khaliliaqdam, Nabi
    Soltani, Afshin
    Latifi, Naser
    Far, Farshid Ghaderi
    COMMUNICATIONS IN SOIL SCIENCE AND PLANT ANALYSIS, 2013, 44 (12) : 1786 - 1799
  • [26] Wheat Seed Classification: Utilizing Ensemble Machine Learning Approach
    Khatri, Ajay
    Agrawal, Shweta
    Chatterjee, Jyotir M.
    SCIENTIFIC PROGRAMMING, 2022, 2022
  • [27] Effects of seed aging on subsequent seed reserve utilization and seedling growth in soybean
    Mohammadi, H.
    Soltani, A.
    Sadeghipour, H. R.
    Zeinali, E.
    INTERNATIONAL JOURNAL OF PLANT PRODUCTION, 2011, 5 (01) : 65 - 70
  • [28] INFLUENCE OF FUNGICIDAL SEED TREATMENT ON MYCOFLORA OF STORED SOYBEAN SEED AND SEEDLING EMERGENCE
    SINGH, OV
    AGARWAL, VK
    NENE, YL
    INDIAN JOURNAL OF AGRICULTURAL SCIENCES, 1973, 43 (08): : 820 - 824
  • [29] PHYSICAL SEED QUALITY OF SOYBEAN
    MCDONALD, MB
    SEED SCIENCE AND TECHNOLOGY, 1985, 13 (03) : 601 - 628
  • [30] Soybean seed vigor discrimination by using infrared spectroscopy and machine learning algorithms
    Larios, Gustavo
    Nicolodelli, Gustavo
    Ribeiro, Matheus
    Canassa, Thalita
    Reis, Andre R.
    Oliveira, Samuel L.
    Alves, Charline Z.
    Marangoni, Bruno S.
    Cena, Cicero
    ANALYTICAL METHODS, 2020, 12 (35) : 4303 - 4309