Underwater Trash Detection with YOLO: Enhancing Environmental Monitoring in Aquatic Ecosystems

This study explores the application of YOLOv8, a cutting-edge object detection framework, to detect underwater waste.  As concerns about protecting marine ecosystems grow, the effective identification and removal of underwater debris have become critical.  The research adapts YOLOv8 to address challenges such as variable lighting, distortions, and occlusions in underwater environments.  A specialized dataset, containing various underwater landscapes and debris types, was created to train and evaluate the model.  Experimental results show strong performance across different YOLOv8 variants: YOLOv8s achieved 78.4% precision, YOLOv8m 83.4%, and YOLOv8l reached 87.8% precision.  These findings highlight YOLOv8l's potential for environmental monitoring and conservation efforts, demonstrating its value for underwater waste detection and supporting future advancements in automated surveillance systems designed to protect underwater ecosystems.

  1. Chin C. S., Bo Hui Neo A., See S.  Visual Marine Debris Detection using Yolov5s for Autonomous Underwater Vehicle.  2022 IEEE/ACIS 22nd International Conference on Computer and Information Science (ICIS). 20–24 (2022).
  2. Varma S. A., Prajna B.  Underwater Plastic Detection Using YOLO.  Industrial Engineering Journal.  52 (9), 178–185 (2023).
  3. Corrigan B. C., Tay Z. Y., Konovessis D.  Real-Time Instance Segmentation for Detection of Underwater Litter as a Plastic Source.  Journal of Marine Science and Engineering.  11 (8), 1532 (2023).
  4. Bawankule R., Gaikwad V., Kulkarni I., Kulkarni S., Jadhav A., Ranjan N.  Visual Detection of Waste using YOLOv8.  2023 International Conference on Sustainable Computing and Smart Systems (ICSCSS).  869–873 (2023).
  5. Benzyane M., Azrour M., Zeroual I., Agoujil S.  State-Of-The-Art Methods for Dynamic Texture Classification: A Comprehensive Review.  Sustainable and Green Technologies for Water and Environmental Management.  1–13 (2024).
  6. Mai K., Cheng W., Wang J., Liu S., Wang Y., Yi Z., Wu X.  Underwater Object Detection Based on DN-DETR.  2023 IEEE International Conference on Real-time Computing and Robotics (RCAR).  762–767 (2023).
  7. Corrigan B. C., Tay Z. Y., Konovessis D.  Real-Time Instance Segmentation for Detection of Underwater Litter as a Plastic Source.  Journal of Marine Science and Engineering.  11 (8), 1532 (2023).
  8. Raisi Z., Nazarzehi Had V.  Mobile Robots Underwater Object Detection Using Deep Learning. SSRN (2023)
  9. Wu C., Sun Y., Wang T., Liu Y.  Underwater Trash Detection Algorithm Based on Improved YOLOv5s.  Journal of Real-Time Image Processing.  19 (5), 911–920 (2022).
  10. Talaat F. M., ZainEldin H.  An Improved Fire Detection Approach Based on YOLO-v8 for Smart Cities.  Neural Computing and Applications.  35 (28), 20939–20954 (2023).
  11. Wu J.  Complexity and Accuracy Analysis of Common Artificial Neural Networks on Pedestrian Detection.  MATEC Web of Conferences.  232, 01003 (2018).
  12. Afdhal A., Saddami K., Sugiarto S., Fuadi Z., Nasaruddin N.  Real-Time Object Detection Performance of YOLOv8 Models for Self-Driving Cars in a Mixed Traffic Environment.  2023 2nd International Conference on Computer System, Information Technology, and Electrical Engineering (COSITE).  260–265 (2023).
  13. Aishwarya N., Vinesh Kumar R.  Banana Ripeness Classification with Deep CNN on NVIDIA Jetson Xavier AGX.  2023 7th International Conference on I-SMAC (IoT in Social, Mobile, Analytics and Cloud) (I-SMAC).  663–668 (2023).
  14. Gallagher J. E., Oughton E. J.  Surveying You Only Look Once (YOLO) Multispectral Object Detection Advancements, Applications, and Challenges.  IEEE Access.  13, 7366–7395 (2025).
  15. Cheng G., Chao P., Yang J., Ding H.  SGST-YOLOv8: An Improved Lightweight YOLOv8 for Real-Time Target Detection for Campus Surveillance.  Applied Sciences.  14 (12), 5341 (2024).
  16. Kumar D., Muhammad N.  Object Detection in Adverse Weather for Autonomous Driving through Data Merging and YOLOv8.  Sensors.  23 (20), 8471 (2023).
  17. Talaat F. M., ZainEldin H.  An improved fire detection approach based on YOLO-v8 for smart cities.  Neural Computing and Applications.  35 (28), 20939–20954 (2023).
  18. Dai Y., Kim D., Lee K.  An Advanced Approach to Object Detection and Tracking in Robotics and Autonomous Vehicles Using YOLOv8 and LiDAR Data Fusion.  Electronics.  13 (12), 2250 (2024).
  19. Ramos L., Casas E., Bendek E., Romero C., Rivas-Echeverría F.  Hyperparameter optimization of YOLOv8 for smoke and wildfire detection: Implications for agricultural and environmental safety.  Artificial Intelligence in Agriculture.  12, 109–126 (2024).
  20. Tamang S., Sen B., Pradhan A., Sharma K., Singh V. K.  Enhancing COVID-19 Safety: Exploring YOLOv8 Object Detection for Accurate Face Mask Classification.  International Journal of Intelligent Systems and Applications in Engineering.  11 (2), 892–897 (2023).
  21. Benzyane M., Azrour M., Zeroual I., Agoujil S.  Investigating the Influence of Convolutional Operations on LSTM Networks in Video Classification.  Data and Metadata.  2, p.152 (2023).
  22. Artamonov N. S., Yakimov P. Y.  Towards Real-Time Traffic Sign Recognition via YOLO on a Mobile GPU.  Journal of Physics: Conference Series.  1096 (1), 012086 (2018).
  23. Benzyane M., Azrour M., Zeroual I., Agoujil S.  Exploring the Impact of Convolutions on LSTM Networks for Video Classification.  Artificial Intelligence, Data Science and Applications. 21–26 (2024).
  24. Benzyane M., Zeroual I., Azrour M., Agoujil S.  Convolutional Long Short-Term Memory Network Model for Dynamic Texture Classification: A Case Study.  International Conference on Advanced Intelligent Systems for Sustainable Development.  383–395 (2023).
  25. Henderson P., Ferrari V.  End-to-End Training of Object Class Detectors for Mean Average Precision.  Computer Vision – ACCV 2016. 198–213 (2017).
  26. Li K., Huang Z., Cheng Y.-C., Lee C.-H.  A Maximal Figure-of-Merit Learning Approach to Maximizing Mean Average Precision with Deep Neural Network Based Classifiers.  2014 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP).  4503–4507 (2014).
  27. Sohan M., Sai Ram T., Rami Reddy Ch. V.  A Review on YOLOv8 and Its Advancements.  Data Intelligence and Cognitive Informatics. 529–545 (2024).