Convolutional Neural Network Architectures for Sonar-Based Diver Detection and Tracking

Igor Kvasić, N. Mišković, Z. Vukic
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引用次数: 27

Abstract

Autonomous underwater navigation presents a whole set of challenges to be resolved in order to become adequately accurate and reliable. That is particularly critical when human divers work in close collaboration with autonomous underwater vehicles (AUVs). In absence of global positioning signals underwater, acoustic based sensors such as LBL (long-baseline), SBL (short-baseline) and USBL (ultrashort-baseline) are commonly used for navigation and localization. In addition to these low-bandwidth and high latency technologies, cameras and sonars can provide position measurements relative to the vehicle which can be used as an aid for navigation as well as for keeping a safe working distance between the diver and the AUV. While optical cameras are highly affected by water turbidity and lighting conditions, sonar images often become hard to interpret using conventional image processing methods due to image granulation and high noise levels.This paper focuses on finding a robust and reliable sonar image processing method for detection and tracking of human divers using convolutional neural networks. Machine learning algorithms are making a huge impact in computer vision applications but are not always considered when it comes to sonar image processing. After presenting commonly used image processing techniques the paper will focus on giving an overview of state-of-the-art machine learning algorithms and explore their performance in custom sonar image dataset processing. Finally, the performance of these algorithms will be compared on a set of sonar recordings to determine their reliability and applicability in a real-time operation.
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基于声纳的潜水员探测与跟踪的卷积神经网络结构
为了达到足够的准确性和可靠性,自主水下导航提出了一系列需要解决的挑战。当人类潜水员与自主水下航行器(auv)密切合作时,这一点尤为重要。在水下没有全球定位信号的情况下,基于声学的传感器如LBL(长基线)、SBL(短基线)和USBL(超短基线)通常用于导航和定位。除了这些低带宽和高延迟技术之外,摄像机和声纳还可以提供相对于车辆的位置测量,这可以作为导航的辅助,并保持潜水员和AUV之间的安全工作距离。虽然光学相机受水浊度和光照条件的影响很大,但由于图像颗粒化和高噪声水平,声纳图像通常难以使用传统的图像处理方法进行解释。本文的重点是寻找一种鲁棒可靠的声纳图像处理方法,利用卷积神经网络对人体潜水员进行检测和跟踪。机器学习算法在计算机视觉应用中产生了巨大的影响,但在声纳图像处理中并不总是被考虑。在介绍了常用的图像处理技术之后,本文将重点介绍最先进的机器学习算法,并探索它们在自定义声纳图像数据集处理中的性能。最后,将在一组声纳记录上比较这些算法的性能,以确定它们在实时操作中的可靠性和适用性。
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