Jelali, Mohieddine:
Deep Learning Networks-Based Tomato Disease and Pest Detection: A First Review of Research Studies Using Real Field Datasets
In: Frontiers in Plant Science: FPLS, Vol. 15
2024-10-25Essay / Article in JournalOA Gold
Faculty of Process Engineering, Energy and Mechanical Systems » Institute of Product Development and Engineering Design
Title:
Deep Learning Networks-Based Tomato Disease and Pest Detection: A First Review of Research Studies Using Real Field Datasets
Author:
Jelali, MohieddineTH Köln
DHSB-ID
THK0001866
ORCID
0000-0002-0347-9913ORCID iD
SCOPUS
6603471393
Other
person connected with TH Köln
corresponding author
Date published:
2024-10-25
„Publication Channel“:
OA Gold
Language of text:
English
Type of resource:
Text
Access Rights:
open access
Peer Reviewed:
Peer Reviewed
Practice Partner:
No
Category:
Research
Part of statistic:
Part of statistic

Abstract in English:

Recent advances in deep neural networks in terms of convolutional neural networks (CNNs) have enabled researchers to significantly improve the accuracy and speed of object recognition systems and their application to plant disease and pest detection and diagnosis. This paper presents the first comprehensive review and analysis of deep learning approaches for disease and pest detection in tomato plants, using self-collected field-based and benchmarking datasets extracted from real agricultural scenarios. The review shows that only a few studies available in the literature used data from real agricultural fields such as the PlantDoc dataset. The paper also reveals overoptimistic results of the huge number of studies in the literature that used the PlantVillage dataset collected under (controlled) laboratory conditions. This finding is consistent with the characteristics of the dataset, which consists of leaf images with a uniform background. The uniformity of the background images facilitates object detection and classification, resulting in higher performance-metric values for the models. However, such models are not very useful in agricultural practice, and it remains desirable to establish large datasets of plant diseases under real conditions. With some of the self-generated datasets from real agricultural fields reviewed in this paper, high performance values above 90% can be achieved by applying different (improved) CNN architectures such as Faster R-CNN and YOLO.