Harnessing Deep Learning for Underwater plastic Trash Identification

Pradyumna K
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Abstract

Abstract—Machine and deep learning (DL) offer significant opportunities for exploring and monitoring oceans and for tackling important problems ranging from litter and oil spill detection to marine biodiversity estimation. Reasonably priced hardware platforms, in the form of autonomous (AUV) and remote operated (ROV) underwater vehicles, are also becoming available, fuelling the growth of data and offering new types of ap- plication areas. This article presents a research vision for DL in the oceans, collating applications and use cases, identifying opportunities, constraints, and open research challenges. We conduct experiments on underwater marine litter detection to demon- strate the benefits DL can bring to underwater envi- ronments. Our results show that integrating DL in underwater explorations can automate and scale-up monitoring, and highlight practical challenges in enabling underwater operations. This project introduces a refined YOLOv8-based algorithm tailored for the en- hanced detection of small-scale underwater debris, to mitigate the prevalent challenges of high miss and false detection rates . The research presents the YOLOv8 algorithm, which optimizes the backbone, neck layer, and C2f module for underwater characteristics and incorporates an effective attention mech- anism. This algorithm improves the accuracy of underwater trash detection while simplifying the computational model. Empirical evidence underscores the superiority of this method over the other conventional network, manifesting in a significant uplift in detection performance. Notably, the proposed method realized a 63% mean average precision (mAP50), a 60% surge in recall (R). Transcending its foundational utility in marine conservation, this methodology harbors potential for subsequent integra- tion into remote sensing ventures. Such an adaptation could substantially enhance the precision of detection models, particularly in the realm of localized surveillance, thereby broad- ening the scope of its applicability and impact.
利用深度学习识别水下塑料垃圾
摘要-机器学习和深度学习(DL)为探索和监测海洋以及解决从垃圾和溢油检测到海洋生物多样性评估等重要问题提供了重要机会。以自主式(AUV)和遥控式(ROV)水下航行器为形式的价格合理的硬件平台也逐渐面世,从而推动了数据的增长,并提供了新型应用领域。本文介绍了海洋中 DL 的研究愿景,整理了各种应用和用例,确定了机遇、限制因素和公开的研究挑战。我们对水下海洋垃圾检测进行了实验,以展示 DL 能为水下环境带来的好处。我们的研究结果表明,在水下勘探中集成 DL 可以实现监测的自动化和规模化,同时也凸显了水下作业所面临的实际挑战。本项目介绍了一种基于 YOLOv8 的改进算法,该算法专为加强小型水下碎片的探测而量身定制,以缓解普遍存在的高漏检率和误检率的挑战。研究提出了 YOLOv8 算法,该算法针对水下特征优化了骨干层、颈部层和 C2f 模块,并纳入了有效的关注机制。该算法提高了水下垃圾检测的准确性,同时简化了计算模型。经验证明,该方法优于其他传统网络,探测性能显著提高。值得注意的是,所提出的方法实现了 63% 的平均精确度(mAP50)和 60% 的召回率(R)。除了在海洋保护方面的基础用途外,该方法还具有与遥感技术结合的潜力。这种调整可以大大提高探测模型的精确度,特别是在局部监测领域,从而扩大其适用范围和影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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