학술논문

Multisensor Data Fusion for Automatized Insect Monitoring (KInsecta)
Document Type
Working Paper
Source
Remote Sensing for Agriculture, Ecosystems, and Hydrology XXV, SPIE 12727 (2023) 1272702
Subject
Computer Science - Machine Learning
Computer Science - Computer Vision and Pattern Recognition
Electrical Engineering and Systems Science - Signal Processing
Language
Abstract
Insect populations are declining globally, making systematic monitoring essential for conservation. Most classical methods involve death traps and counter insect conservation. This paper presents a multisensor approach that uses AI-based data fusion for insect classification. The system is designed as low-cost setup and consists of a camera module and an optical wing beat sensor as well as environmental sensors to measure temperature, irradiance or daytime as prior information. The system has been tested in the laboratory and in the field. First tests on a small very unbalanced data set with 7 species show promising results for species classification. The multisensor system will support biodiversity and agriculture studies.