A comparative study of bread wheat varieties identification on feature extraction, feature selection and machine learning algorithms

被引:9
|
作者
Kilicarslan, Serhat [1 ]
Kilicarslan, Sabire [1 ]
机构
[1] Bandirma Onyedi Eylul Univ, Fac Engn & Nat Sci, Dept Software Engn, TR-10200 Balikesir, Turkiye
关键词
Bread wheat; CNN; Classification; MobileNetV2; GLCM and color-space; Machine learning; SYSTEM;
D O I
10.1007/s00217-023-04372-0
中图分类号
TS2 [食品工业];
学科分类号
0832 ;
摘要
Wheat is unquestionably the primary source of sustenance in human dietary intake. The cultivation areas and production capacity of wheat worldwide have been observed to increase in parallel with the growth of the global population. Wheat grains from different varieties, when mixed with durum wheat, result in a reduction in the protein content. Various types of wheat grains also exhibit the same characteristic. In this particular scenario, the significance of accurately categorizing wheat becomes more pronounced. In recent years, there has been a proliferation of studies aimed at categorizing agricultural products through the application of deep learning and machine learning methodologies. In the present study, a novel approach was introduced to simultaneously analyze deep features and image patches. This was achieved by utilizing a dataset consisting of a comprehensive collection of 8354 images, encompassing various bread wheat varieties. The classification of wheat types was carried out by employing feature extraction using three distinct methods. MobileNetV2, EfficientNetV2B0, GLCM, and Color-Space algorithms were employed to extract features from the images. Lastly, the Support Vector Machine (SVM), Random Subspace ensemble with k-Nearest Neighbors (RSeslibKnn), Artificial Neural Network (ANN), and Random Forest algorithms were employed to develop models for the classification of bread wheat images. The evaluation of the experimental performances was conducted based on the criteria of accuracy, precision, recall, F-score, and mean absolute error (MAE). In general, the obtained accuracies ranged from 91.50 to 98.65%, which demonstrates the models' proficiency in accurately classifying the samples. When examining different algorithms, Support Vector Machines (SVM) consistently demonstrate robust performance by achieving high levels of accuracy, precision, recall, and F-scores across various feature combinations.
引用
收藏
页码:135 / 149
页数:15
相关论文
共 50 条
  • [31] Feature selection and machine learning algorithms for uyghur text sentiment classification
    Turhuntay, Raxida
    Slamu, Wushour
    Dawut, Abdusalam
    Hamdulla, Askar
    Turhun, Erxat
    Boletin Tecnico/Technical Bulletin, 2017, 55 (13): : 56 - 66
  • [32] Feature Selection for Machine Learning Based Step Length Estimation Algorithms
    Vandermeeren, Stef
    Bruneel, Herwig
    Steendam, Heidi
    SENSORS, 2020, 20 (03)
  • [33] Early Prediction of Diabetes Using Feature Selection and Machine Learning Algorithms
    Abdollahi J.
    Aref S.
    SN Computer Science, 5 (2)
  • [34] Data Driven Feature Selection for Machine Learning Algorithms in Computer Vision
    Zhang, Fan
    Li, Wei
    Zhang, Yifan
    Feng, Zhiyong
    IEEE INTERNET OF THINGS JOURNAL, 2018, 5 (06): : 4262 - 4272
  • [35] A comparative study of image low level feature extraction algorithms
    El-Gayar, M. M.
    Soliman, H.
    meky, N.
    EGYPTIAN INFORMATICS JOURNAL, 2013, 14 (02) : 175 - 181
  • [36] Boosting Algorithms for Simultaneous Feature Extraction and Selection
    Saberian, Mohammad J.
    Vasconcelos, Nuno
    2012 IEEE CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR), 2012, : 2448 - 2455
  • [37] Comparative Study for Feature Selection Algorithms in Intrusion Detection System
    Anusha, K.
    Sathiyamoorthy, E.
    AUTOMATIC CONTROL AND COMPUTER SCIENCES, 2016, 50 (01) : 1 - 9
  • [38] A Comparative Study of the Stability of Filter based Feature Selection Algorithms
    Sen, Rikta
    Mandal, Ashis Kumar
    Goswami, Saptarsi
    Chakraborty, Basabi
    2019 IEEE 10TH INTERNATIONAL CONFERENCE ON AWARENESS SCIENCE AND TECHNOLOGY (ICAST 2019), 2019, : 192 - 197
  • [39] Machine learning and neural network approaches to feature selection and extraction for classification
    Russell, I
    Markov, Z
    Carse, B
    Pipe, AG
    Holder, LB
    INTERNATIONAL JOURNAL OF PATTERN RECOGNITION AND ARTIFICIAL INTELLIGENCE, 2005, 19 (02) : 129 - 132
  • [40] Automatic Feature Extraction and Selection For Machine Learning Based Intrusion Detection
    Liu, Jinjie
    Chung, Sun Sunnie
    2019 IEEE SMARTWORLD, UBIQUITOUS INTELLIGENCE & COMPUTING, ADVANCED & TRUSTED COMPUTING, SCALABLE COMPUTING & COMMUNICATIONS, CLOUD & BIG DATA COMPUTING, INTERNET OF PEOPLE AND SMART CITY INNOVATION (SMARTWORLD/SCALCOM/UIC/ATC/CBDCOM/IOP/SCI 2019), 2019, : 1400 - 1405