Tea leaf disease detection and identification based on YOLOv7 (YOLO-T).

Journal: Scientific reports
Published Date:

Abstract

A reliable and accurate diagnosis and identification system is required to prevent and manage tea leaf diseases. Tea leaf diseases are detected manually, increasing time and affecting yield quality and productivity. This study aims to present an artificial intelligence-based solution to the problem of tea leaf disease detection by training the fastest single-stage object detection model, YOLOv7, on the diseased tea leaf dataset collected from four prominent tea gardens in Bangladesh. 4000 digital images of five types of leaf diseases are collected from these tea gardens, generating a manually annotated, data-augmented leaf disease image dataset. This study incorporates data augmentation approaches to solve the issue of insufficient sample sizes. The detection and identification results for the YOLOv7 approach are validated by prominent statistical metrics like detection accuracy, precision, recall, mAP value, and F1-score, which resulted in 97.3%, 96.7%, 96.4%, 98.2%, and 0.965, respectively. Experimental results demonstrate that YOLOv7 for tea leaf diseases in natural scene images is superior to existing target detection and identification networks, including CNN, Deep CNN, DNN, AX-Retina Net, improved DCNN, YOLOv5, and Multi-objective image segmentation. Hence, this study is expected to minimize the workload of entomologists and aid in the rapid identification and detection of tea leaf diseases, thus minimizing economic losses.

Authors

  • Md Janibul Alam Soeb
    Department of Farm Power and Machinery, Sylhet Agricultural University, Sylhet, 3100, Bangladesh. janibul.fpm@sau.ac.bd.
  • Md Fahad Jubayer
    Department of Food Engineering and Technology, Sylhet Agricultural University, Sylhet, 3100, Bangladesh. jubayer.fet@sau.ac.bd.
  • Tahmina Akanjee Tarin
    Department of Farm Power and Machinery, Sylhet Agricultural University, Sylhet, 3100, Bangladesh.
  • Muhammad Rashed Al Mamun
    Department of Farm Power and Machinery, Sylhet Agricultural University, Sylhet, 3100, Bangladesh.
  • Fahim Mahafuz Ruhad
    Department of Agricultural Construction and Environmental Engineering, Sylhet Agricultural University, Sylhet, 3100, Bangladesh.
  • Aney Parven
    Global Centre for Environmental Remediation (GCER), College of Engineering, Science and Environment, The University of Newcastle, Callaghan, NSW, 2308, Australia.
  • Nabisab Mujawar Mubarak
    Petroleum and Chemical Engineering, Faculty of Engineering, Universiti Teknologi Brunei, Bandar Seri Begawan, BE1410, Brunei Darussalam. mubarak.mujawar@utb.edu.bn.
  • Soni Lanka Karri
    Faculty of Integrated Technologies, Universiti Brunei Darussalam, Bandar Seri Begawan, BE1410, Brunei Darussalam.
  • Islam Md Meftaul
    Global Centre for Environmental Remediation (GCER), College of Engineering, Science and Environment, The University of Newcastle, Callaghan, NSW, 2308, Australia. mdmeftaul.islam@uon.edu.au.