利用多波束前视声纳进行水下物体探测的高级深度学习框架

Liangfu Ge, Premjeet Singh, Ayan Sadhu
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摘要

水下物体探测(UOD)是维护和监测水下基础设施的一项基本活动,在高效、低风险的资产管理中发挥着重要作用。在水下环境中,声纳因其克服了光学成像在弱光和浑浊条件下的局限性,在水下物体探测中越来越受欢迎。然而,由于声纳图像分辨率低、前景与背景对比度有限,现有的基于声纳的物体检测算法在精度和可移植性方面仍面临挑战。为了解决这些难题,本文提出了一种先进的深度学习框架,用于利用多波束前视声纳数据进行 UOD。该框架改编自最先进的基于视觉的物体检测算法之一 YOLOv7 的网络架构,在数据预处理、特征融合和损失函数三个关键方面进行了独特的优化。这些改进在专门的公共数据集上进行了广泛测试,结果显示,与选定的现有基于声纳的方法相比,该算法具有更优越的物体分类性能。通过在水下遥控潜水器上进行的实验,所提出的框架验证了目标分类、定位和迁移学习能力的显著增强。由于工程结构与本研究中测试的物体具有相似的几何形状,因此所提出的框架具有潜在的适用性,可用于水下结构检测和监控以及自主资产管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advanced deep learning framework for underwater object detection with multibeam forward-looking sonar
Underwater object detection (UOD) is an essential activity in maintaining and monitoring underwater infrastructure, playing an important role in their efficient and low-risk asset management. In underwater environments, sonar, recognized for overcoming the limitations of optical imaging in low-light and turbid conditions, has increasingly gained popularity for UOD. However, due to the low resolution and limited foreground-background contrast in sonar images, existing sonar-based object detection algorithms still face challenges regarding precision and transferability. To solve these challenges, this article proposes an advanced deep learning framework for UOD that uses the data from multibeam forward-looking sonar. The framework is adapted from the network architecture of YOLOv7, one of the state-of-the-art vision-based object detection algorithms, by incorporating unique optimizations in three key aspects: data preprocessing, feature fusion, and loss functions. These improvements are extensively tested on a dedicated public dataset, showing superior object classification performance compared to the selected existing sonar-based methods. Through experiments conducted on an underwater remotely operated vehicle, the proposed framework validates significant enhancements in target classification, localization, and transfer learning capabilities. Since the engineering structures have similar geometric shapes to the objects tested in this study, the proposed framework presents potential applicability to underwater structural inspection and monitoring, and autonomous asset management.
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