基于合成数据的水下目标检测

Nitish Reddy Nandyala, Rakesh Kumar Sanodiya
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引用次数: 0

摘要

在具有挑战性的水下环境中探测生命的能力有可能保护许多水生物种和珊瑚礁。近年来,由于光线不平衡、对比度不足、频繁遮挡以及水生生物形式的模仿,自然图像的目标检测研究出现了显著的增长,但水下图像的目标检测研究却没有取得显著进展。在各种环境中使用的对象识别模型的评估增加了对注释数据集的需求。由于生成这些数据集的劳动密集型性质,我们选择使用合成图像作为替代方法进行训练。在本研究中,我们在一个合成的水下数据集上训练前沿的YOLO目标检测系统,目的是实现与类别无关的目标检测,然后通过对真实水下图像进行实际评估来进行评估。此外,我们在这项工作中提供了不同YOLO版本的基准测试结果,评估了它们在真实世界和合成数据集上的性能。我们的调查显示,YOLOv5在处理合成数据方面表现出色,而最新的YOLOv8在实际数据领域表现出色,超过了测试的其他两种模型。这些发现对水下环境中目标探测的设计和发展具有深远的意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Underwater Object Detection Using Synthetic Data
The ability to detect life in challenging underwater environments holds the potential to preserve many aquatic species and coral reefs. Recent object detection research has witnessed a remarkable upsurge in natural images but not in Underwater, due to the imbalanced lighting, inadequate contrast, frequent occlusions, and the mimicry displayed by aquatic life forms. The assessment of object recognition models utilized in various contexts has augmented the need for annotated datasets. Due to the labor-intensive nature of generating these datasets, we have opted to undertake training using synthetic images as an alternative. In this study, we train the cutting-edge YOLO object detection system on a synthetic underwater dataset, with the aim of achieving category-agnostic object detection and then evaluated through practical assessments conducted on real underwater images. In addition, we provide benchmarking results for different YOLO versions in this work, assessing their performance on both real-world and synthetic datasets. Our investigation reveal that YOLOv5 shines in its ability to perform on synthetic data, whereas the latest YOLOv8, excels in real data domains, outpacing other two models tested. These findings have far reaching implications for the design and development of object detection in underwater environments.
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