Counting with Confidence: Accurate Pest Monitoring in Water Traps
Xumin Gao, Mark Stevens, Grzegorz Cielniak

TL;DR
This paper introduces a comprehensive method for evaluating pest counting confidence in water trap images, integrating detection, image quality, environmental factors, and a regression model to improve accuracy and reliability in pest monitoring.
Contribution
It presents the first approach to quantitatively assess pest counting confidence by combining multiple factors and external conditions, enhancing real-world deployment reliability.
Findings
Reduced mean squared error by 31.7%
Improved R2 score by 15.2%
Enhanced pest counting reliability in practical scenarios
Abstract
Accurate pest population monitoring and tracking their dynamic changes are crucial for precision agriculture decision-making. A common limitation in existing vision-based automatic pest counting research is that models are typically evaluated on datasets with ground truth but deployed in real-world scenarios without assessing the reliability of counting results due to the lack of ground truth. To this end, this paper proposed a method for comprehensively evaluating pest counting confidence in the image, based on information related to counting results and external environmental conditions. First, a pest detection network is used for pest detection and counting, extracting counting result-related information. Then, the pest images undergo image quality assessment, image complexity assessment, and pest distribution uniformity assessment. And the changes in image clarity caused by stirring…
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Taxonomy
TopicsSmart Agriculture and AI · Insect Pheromone Research and Control · Advanced Neural Network Applications
