Real-Time Beach Litter Detection and Counting: A Comparative Analysis of RT-DETR Model Variants
By: Miftahul Huda , Arsyiah Azahra , Putri Maulida Chairani and more
Potential Business Impact:
Finds trash on beaches fast.
Coastal pollution is a pressing global environmental issue, necessitating scalable and automated solutions for monitoring and management. This study investigates the efficacy of the Real-Time Detection Transformer (RT-DETR), a state-of-the-art, end-to-end object detection model, for the automated detection and counting of beach litter. A rigorous comparative analysis is conducted between two model variants, RT-DETR-Large (RT-DETR-L) and RT-DETR-Extra-Large (RT-DETR-X), trained on a publicly available dataset of coastal debris. The evaluation reveals that the RT-DETR-X model achieves marginally superior accuracy, with a mean Average Precision at 50\% IoU (mAP@50) of 0.816 and a mAP@50-95 of 0.612, compared to the RT-DETR-L model's 0.810 and 0.606, respectively. However, this minor performance gain is realized at a significant computational cost; the RT-DETR-L model demonstrates a substantially faster inference time of 20.1 ms versus 34.5 ms for the RT-DETR-X. The findings suggest that the RT-DETR-L model offers a more practical and efficient solution for real-time, in-field deployment due to its superior balance of processing speed and detection accuracy. This research provides valuable insights into the application of advanced Transformer-based detectors for environmental conservation, highlighting the critical trade-offs between model complexity and operational viability.
Similar Papers
Real-Time Beach Litter Detection and Counting: A Comparative Analysis of RT-DETR Model Variants
CV and Pattern Recognition
Finds trash on beaches automatically and fast.
RF-DETR: Neural Architecture Search for Real-Time Detection Transformers
CV and Pattern Recognition
Finds objects in pictures faster and better.
A Comparative Benchmark of Real-time Detectors for Blueberry Detection towards Precision Orchard Management
CV and Pattern Recognition
Finds blueberries faster and more accurately.