The goalof this project is to createa website and mobile application that will allow identification and sharing of information on insect pests in Pacific Northwest cereal crop systems. More specifically, the objectives and sub-objectives of the project are:Objective 1. Create an open-source artificial intelligence software framework for automated identification of Inland PNW cereal system crop pests from cell phone photographs1a. Collect images of current and anticipated insect pests of Inland PNW cereal crops and rotational crops and train an artificial neural network (ANN) to classify them to species1b. Refine the image processing, ANN training, and prediction for efficiency in various visual contexts and pest combinations and to utilize real-time interactions with usersObjective 2. Incorporate the framework from (1) into an AI-aided decision support system (DSS) and community-based resource for managing pests in Inland PNW cereal systems.2a. Couple the identification framework with recommendations within a mobile application for use by producers and pest advisors2b. Build in the capacity for users to upload images into a web portal for community feedback and supervised inclusion in the ongoing training databaseObjective 3. Refine and disseminate the system developed in (2) to the target user populations3a. Solicit volunteer test users through extension outlets, grower meetings and other conduits3b. Release Version 1.0 and disseminate throughout the Inland PNW and in other regions with shared rotational crops and pest complexes
FACT-AI: HARNESSING ARTIFICIAL INTELLIGENCE FOR IMPLEMENTING INTEGRATED PEST MANAGEMENT IN SMALL-GRAIN PRODUCTION SYSTEMS
Objective
Investigators
Borowiec, M.; Eigenbrode, SA, DA.; Adhikari, SU, .; Sheneman, LU, JA.
Institution
COLORADO STATE UNIVERSITY
Start date
2023
End date
2025
Funding Source
Project number
COL0-2023-04341
Accession number
1031386