设计和开发用于自动潜航器寻航应用的深度学习辅助视觉制导系统

IF 1.7 4区 计算机科学 Q3 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
V. Bala Naga Jyothi;S. Jai Akash;G. Ananda Ramadass;N. Vedachalam;Hrishikesh Venkataraman
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引用次数: 0

摘要

在当前的海底工业领域,自动潜航器(AUV)被广泛用于探险和勘探。然而,由于电池容量的限制,任务持续时间有限。为了延长续航时间,需要一个水下对接站(DS)来为电池充电,同时更新下一次任务的配置文件。在这封信中,我们设想利用深度学习(DL)技术辅助短程视觉制导,实现可靠、精确的 AUV 归航操作。智能控制算法与高效的基于深度学习的只看一次(YOLO)v5 图像处理技术被用于 DS 检测和跟踪,并部署在集成到 AUV 原型的边缘计算机中。已在 2 米深的试验水槽中演示了所开发的带高清摄像头的照明潜水器和自动潜航器原型。对潜水器数据集进行了分析,该数据集包括 132 幅清澈和浑浊水域的图像,其中 13 幅指定用于测试,40 幅用于验证,79 幅用于培训。结果表明,探测到水下摄影机的概率为 95%,探测距离为 5 米;在湍流较小的水域,探测到水下摄影机的概率为 CEP 90,位置误差为 5%;在湍流较大的水域,探测到水下摄影机的概率为 60%,位置误差为 25%,探测距离为 1 米。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design and Development of Deep Learning-Aided Vision Guidance System for AUV Homing Applications
In the current subsea industry scenario, autonomous underwater vehicles (AUVs) are widely used for expeditions and explorations. However, the mission duration is limited due to the limitations in the battery capacity. To increase the endurance, there is a need for a submerged docking station (DS) to charge the battery, also to update the next mission profile. In this letter, deep learning (DL) technique aided short-range vision guidance is envisaged for a reliable and precise AUV homing operation. Intelligent control algorithms with an efficient DL-based you only look once (YOLO) v5-image processing techniques are used for DS detection and tracking and deployed in an edge computer integrated into AUV prototype. The developed illuminated DS and AUV prototype with high-definition camera has been demonstrated in test tank at depth of 2 m. An analysis was conducted on the DS data set, which comprised 132 images of clear and turbid water, 13 were designated for testing, 40 for validation, and 79 for training purposes. The results were observed that the probability of detecting the DS is 95%, detection range is 5 m, the probability of homing toward the DS is CEP 90 with the position error of 5% in less-turbid waters and in high-turbid waters, 60% is the probability of DS detection with position error up to 25%, detectable range is 1 m. The proposed embedded hardware is extremely useful for underwater reliable homing applications.
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来源期刊
IEEE Embedded Systems Letters
IEEE Embedded Systems Letters Engineering-Control and Systems Engineering
CiteScore
3.30
自引率
0.00%
发文量
65
期刊介绍: The IEEE Embedded Systems Letters (ESL), provides a forum for rapid dissemination of latest technical advances in embedded systems and related areas in embedded software. The emphasis is on models, methods, and tools that ensure secure, correct, efficient and robust design of embedded systems and their applications.
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