CVETLGPFAug 6, 2025

Learning Using Privileged Information for Litter Detection

arXiv:2508.04124v11 citationsh-index: 8EUVIP
Originality Incremental advance
AI Analysis

This work addresses litter pollution by enhancing automated detection tools, though it is incremental as it builds on existing object detection methods.

The study tackled litter detection by combining privileged information with deep learning object detection, achieving consistent performance improvements across five models without increasing complexity.

As litter pollution continues to rise globally, developing automated tools capable of detecting litter effectively remains a significant challenge. This study presents a novel approach that combines, for the first time, privileged information with deep learning object detection to improve litter detection while maintaining model efficiency. We evaluate our method across five widely used object detection models, addressing challenges such as detecting small litter and objects partially obscured by grass or stones. In addition to this, a key contribution of our work can also be attributed to formulating a means of encoding bounding box information as a binary mask, which can be fed to the detection model to refine detection guidance. Through experiments on both within-dataset evaluation on the renowned SODA dataset and cross-dataset evaluation on the BDW and UAVVaste litter detection datasets, we demonstrate consistent performance improvements across all models. Our approach not only bolsters detection accuracy within the training sets but also generalises well to other litter detection contexts. Crucially, these improvements are achieved without increasing model complexity or adding extra layers, ensuring computational efficiency and scalability. Our results suggest that this methodology offers a practical solution for litter detection, balancing accuracy and efficiency in real-world applications.

Foundations

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