Abstract
AbstractMarine and ocean pollution is one of the most serious environmental problems in the world. Marine plastics pose a significant threat to the marine ecosystem due to their negative effects. After passing through various processes, plastic waste accumulates on the seafloor and fragments into very small pieces known as microplastics. These microplastics are to blame for the extinction and death of aquatic life. This study obtained a hybrid underwater dataset containing 13,089 images, sized 300 × 300, including garbage and sea animals. In the proposed method, this dataset is used to develop our example projector deep feature generator. In this study, using the Resnet101 network in a sample projector build, the feature generator creates 6,000 features. Using NCA (Neighborhood Component Analysis), the best 1000 features from a pool of 6,000 are selected. The kNN (k-nearest neighbor) algorithm is then used to classify the resulting feature vectors. As validation techniques, both tenfold cross-validations were used. The hybrid dataset's best accuracy was calculated to be 99.35%. Our recommendation is successful based on the comparisons and calculated performance measures.
Funder
Firat University Scientific Research Projects Management Unit
TUBITAK
Fırat University
Publisher
Springer Science and Business Media LLC
Reference28 articles.
1. Valdenegro-Toro M (2017) Submerged marine debris detection with autonomous underwater vehicles. Int Conf Robot Autom Humanitarian Appl, RAHA 2016 – Conf Proc. https://doi.org/10.1109/RAHA.2016.7931907
2. Yilmaz (2018) Applying segmentation and neural networks to detect and quantify marine debris from aerial images captured by an unmanned aerial system and mobile device. Texas A&M University-Corpus Christi Corpus Christi, Texas
3. Xu F, Ding X, Peng J et al (2018) Real-time detecting method of marine small object with underwater robot vision. 2018 OCEANS - MTS/IEEE Kobe Techno-Oceans. Oceans - Kobe 2018:5–8. https://doi.org/10.1109/OCEANSKOBE.2018.8558804
4. Qiu Z, Yao Y, Zhong M (2019) Underwater sea cucumbers detection based on pruned SSD. Proc 2019 IEEE 3rd Adv Inform Manag, Communicates, Electron Autom Control Conf, IMCEC 2019:738–742. https://doi.org/10.1109/IMCEC46724.2019.8983935
5. Fulton M, Hong J, Islam MJ, Sattar J (2019) Robotic detection of marine litter using deep visual detection models. Proc - IEEE Int Conf Robot Autom 2019-May:5752–5758. https://doi.org/10.1109/ICRA.2019.8793975