This collection features six peer-reviewed reviews on advances and in
detecting and forecasting crop pests and diseases.
The first chapter introduces the concept of machine learning to identify
and diagnose crop diseases, focussing on the deep learning concept.
The second chapter discusses recent advances in crop disease forecasting
models, focussing on the application of precision agriculture
technologies and Earth observation satellites to identify areas at risk
of possible disease outbreaks.
The third chapter explores the contribution of remote sensing in
improving the ways in which plant health is monitored in response to
exposure to biotic stresses, such as disease.
The fourth chapter reviews how sensor technologies in combination with
informatics and modern application technologies can contribute to more
effective pest control.
The fifth chapter assesses the role of decision support systems for pest
monitoring and management through information technology, such as
spectral indices and image-based diagnostics.
The final chapter addresses key issues and challenges in pest monitoring
and forecasting models, such as the limitation of some traps in
attracting insects through the use of sex pheromones.