Plant Monitoring
Plant monitoring research focuses on developing automated and efficient methods for assessing plant health and growth, primarily to optimize agricultural practices and resource management. Current efforts leverage computer vision, employing deep learning architectures like YOLO and ResNet for image analysis and object detection, alongside machine learning algorithms for data analysis and prediction of plant traits. These advancements enable precise phenotyping, early disease detection, and improved irrigation strategies, ultimately contributing to increased crop yields and sustainable agriculture. Furthermore, the integration of IoT sensors and AI-powered language models facilitates real-time plant monitoring and communication, enhancing human-plant interaction and promoting data-driven decision-making.
Papers
Vision-based Xylem Wetness Classification in Stem Water Potential Determination
Pamodya Peiris, Aritra Samanta, Caio Mucchiani, Cody Simons, Amit Roy-Chowdhury, Konstantinos Karydis
Enhancing IoT based Plant Health Monitoring through Advanced Human Plant Interaction using Large Language Models and Mobile Applications
Kriti Agarwal, Samhruth Ananthanarayanan, Srinitish Srinivasan, Abirami S