iPathology: Robotic applications and management of plants and plant diseases

The rapid development of new technologies and the changing landscape of the online world (e.g., Internet of Things (IoT), Internet of All, cloud-based solutions) provide a unique opportunity for developing automated and robotic systems for urban farming, agriculture, and forestry. Technological advances in machine vision, global positioning systems, laser technologies, actuators, and mechatronics have enabled the development and implementation of robotic systems and intelligent technologies for precision agriculture. Herein, we present and review robotic applications on plant pathology and management, and emerging agricultural technologies for intra-urban agriculture. Greenhouse advanced management systems and technologies have been greatly developed in the last years, integrating IoT and WSN (Wireless Sensor Network). Machine learning, machine vision, and AI (Artificial Intelligence) have been utilized and applied in agriculture for automated and robotic farming. Intelligence technologies, using machine vision/learning, have been developed not only for planting, irrigation, weeding (to some extent), pruning, and harvesting, but also for plant disease detection and identification. However, plant disease detection still represents an intriguing challenge, for both abiotic and biotic stress. Many recognition methods and technologies for identifying plant disease symptoms have been successfully developed; still, the majority of them require a controlled environment for data acquisition to avoid false positives. Machine learning methods (e.g., deep and transfer learning) present promising results for improving image processing and plant symptom identification. Nevertheless, diagnostic specificity is a challenge for microorganism control and should drive the development of mechatronics and robotic solutions for disease management.

Author supplied keywords

Register to see more suggestions

Mendeley helps you to discover research relevant for your work.

Already have an account? Sign in

Cite

Ampatzidis, Y., Bellis, L. D., & Luvisi, A. (2017). iPathology: Robotic applications and management of plants and plant diseases. Sustainability (Switzerland). MDPI. https://doi.org/10.3390/su9061010

Readers' Seniority

PhD / Post grad / Masters / Doc 117

Professor / Associate Prof. 26

Lecturer / Post doc 24

Readers' Discipline

Computer Science 61

Agricultural and Biological Sciences 51

Business, Management and Accounting 11

Save time finding and organizing research with Mendeley