2024
DOI: 10.3390/app14125277
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IDP-YOLOV9: Improvement of Object Detection Model in Severe Weather Scenarios from Drone Perspective

Jun Li,
Yongqiang Feng,
Yanhua Shao
et al.

Abstract: Despite their proficiency with typical environmental datasets, deep learning-based object detection algorithms struggle when faced with diverse adverse weather conditions. Moreover, existing methods often address single adverse weather scenarios, neglecting situations involving multiple concurrent adverse conditions. To tackle these challenges, we propose an enhanced approach to object detection in power construction sites under various adverse weather conditions, dubbed IDP-YOLOV9. This model leverages a para… Show more

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