Comparison Study of Corn Leaf Disease Detection based on Deep Learning YOLO-v5 and YOLO-v8

convolutional neural network corn leaf disease deep learning disease detection YOLO models

Authors

  • Nidya Chitraningrum Research Center for Biomass and Bioproducts, National Research and Innovation Agency (BRIN), Jalan Raya Jakarta-Bogor No. KM 46, Cibinong, Bogor 16911, Indonesia, Indonesia
  • Lies Banowati Department of Aeronatics Engineering, Universitas Nurtanio, Jalan Pajajaran No. 219, Bandung 40174, Indonesia, Indonesia
  • Dina Herdiana Department of Electrical Engineering, Universitas Nurtanio, Jalan Pajajaran No. 219, Bandung 40174, Indonesia, Indonesia
  • Budi Mulyati Department of Aeronatics Engineering, Universitas Nurtanio, Jalan Pajajaran No. 219, Bandung 40174, Indonesia, Indonesia
  • Indra Sakti Research Center for Telecommunication, National Research and Innovation Agency (BRIN), Jalan Sangkuriang, Kawasan KST Samaun Samadikun Gd. 20, Bandung 40135, Indonesia, Indonesia
  • Ahmad Fudholi Research Center for Energy Conversion and Conservation, National Research and Innovation Agency (BRIN), Kawasan PUSPIPTEK, Kluster Energi Gd. 620-625, Setu – Tangerang Selatan 15314, Indonesia, Indonesia
  • Huzair Saputra Master of Artificial Intelligence, Department of Informatics, Universitas Syiah Kuala, Jalan Syech Abdurrauf No. 3, Kopelma Darussalam, Banda Aceh 23111, Indonesia, Indonesia
  • Salman Farishi Research Center for Polymer Technology, National Research and Innovation Agency (BRIN), Kawasan PUSPIPTEK, Gd. 460, Setu – Tangerang Selatan 15314, Indonesia, Indonesia
  • Kahlil Muchtar
    kahlil@usk.ac.id
    Telematics Research Center (TRC), Universitas Syiah Kuala, Jalan Syech Abdurrauf No. 3, Kopelma Darussalam, Banda Aceh 23111 Banda Aceh, Indonesia, Indonesia
  • Agus Andria The Central Bureau of Statistics (BPS) Kabupaten Simeulue, Jalan Tgk. Diujung Desa Air Dingin, Sinabang, Simelue Timur, Simeulue Regency, Aceh 24782, Indonesia, Indonesia
February 29, 2024

Downloads

Corn is one of the primary carbohydrate-rich food commodities in Southeast Asian countries, among which Indonesia. Corn production is highly dependent on the health of the corn plant. Infected plants will decrease corn plant productivity. Usually, corn farmers use conventional methods to control diseases in corn plants. Still, these methods are not effective and efficient because they require a long time and a lot of human labor. Deep learning-based plant disease detection has recently been used for early disease detection in agriculture. In this work, we used convolutional neural network algorithms, namely YOLO-v5 and YOLO-v8, to detect infected corn leaves in the public data set called ‘Corn Leaf Infection Data set’ from the Kaggle repository. We compared the mean average precision (mAP) of mAP 50 and mAP 50-95 between YOLO-v5 and YOLO-v8. YOLO-v8 showed better accuracy at an mAP 50 of 0.965 and an mAP 50-95 of 0.727. YOLO-v8 also showed a higher detection number of 12 detections than YOLO-v5 at 11 detections. Both YOLO algorithms required about 2.49 to 3.75 hours to detect the infected corn leaves. This all-trained model could be an effective solution for early disease detection in future corn plantations.