TY - JOUR
T1 - Integrating UAVs and Deep Learning for Plant Disease Detection
T2 - A Review of Techniques, Datasets, and Field Challenges with Examples from Cassava
AU - Ahmed, Wasiu Akande
AU - Abiola, Olayinka Ademola
AU - Yang, Dongkai
AU - Olatoyinbo, Seyi Festus
AU - Jing, Guifei
N1 - Publisher Copyright:
© 2026 by the authors.
PY - 2026/1
Y1 - 2026/1
N2 - Cassava remains a critical food-security crop across Africa and Southeast Asia but is highly vulnerable to diseases such as cassava mosaic disease (CMD) and cassava brown streak disease (CBSD). Traditional diagnostic approaches are slow, labor-intensive, and inconsistent under field conditions. This review synthesizes current advances in combining unmanned aerial vehicles (UAVs) with deep learning (DL) to enable scalable, data-driven cassava disease detection. It examines UAV platforms, sensor technologies, flight protocols, image preprocessing pipelines, DL architectures, and existing datasets, and it evaluates how these components interact within UAV–DL disease-monitoring frameworks. The review also compares model performance across convolutional neural network-based and Transformer-based architectures, highlighting metrics such as accuracy, recall, F1-score, inference speed, and deployment feasibility. Persistent challenges—such as limited UAV-acquired datasets, annotation inconsistencies, geographic model bias, and inadequate real-time deployment—are identified and discussed. Finally, the paper proposes a structured research agenda including lightweight edge-deployable models, UAV-ready benchmarking protocols, and multimodal data fusion. This review provides a consolidated reference for researchers and practitioners seeking to develop practical and scalable cassava-disease detection systems.
AB - Cassava remains a critical food-security crop across Africa and Southeast Asia but is highly vulnerable to diseases such as cassava mosaic disease (CMD) and cassava brown streak disease (CBSD). Traditional diagnostic approaches are slow, labor-intensive, and inconsistent under field conditions. This review synthesizes current advances in combining unmanned aerial vehicles (UAVs) with deep learning (DL) to enable scalable, data-driven cassava disease detection. It examines UAV platforms, sensor technologies, flight protocols, image preprocessing pipelines, DL architectures, and existing datasets, and it evaluates how these components interact within UAV–DL disease-monitoring frameworks. The review also compares model performance across convolutional neural network-based and Transformer-based architectures, highlighting metrics such as accuracy, recall, F1-score, inference speed, and deployment feasibility. Persistent challenges—such as limited UAV-acquired datasets, annotation inconsistencies, geographic model bias, and inadequate real-time deployment—are identified and discussed. Finally, the paper proposes a structured research agenda including lightweight edge-deployable models, UAV-ready benchmarking protocols, and multimodal data fusion. This review provides a consolidated reference for researchers and practitioners seeking to develop practical and scalable cassava-disease detection systems.
KW - cassava disease detection
KW - deep learning
KW - machine learning
KW - precision agriculture
KW - unmanned aerial vehicles (UAVs)
UR - https://www.scopus.com/pages/publications/105029140545
U2 - 10.3390/horticulturae12010087
DO - 10.3390/horticulturae12010087
M3 - 文献综述
AN - SCOPUS:105029140545
SN - 2311-7524
VL - 12
JO - Horticulturae
JF - Horticulturae
IS - 1
M1 - 87
ER -