自主水下航行器水下对接目标鲁棒识别

M. F. Yahya, M. Arshad
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引用次数: 5

摘要

水下对接对于自主水下航行器来说非常重要,因为水下航行器可以停靠在一个对接站为电池充电,传输数据,并可用于发射和回收系统。要进行对接,通过视觉识别空间站是很重要的。利用视觉识别目标引导水下航行器返航到空间站的水下对接研究较少。在这些研究中,当一个或多个目标无法被检测到时,对接是不成功的。具体而言,如果从捕获图像中获取的目标数量与期望图像中的目标数量不相同,则图像处理部分无法识别目标。为了克服上述问题,本文提出了一种基于边界盒划分的鲁棒目标识别算法。结果表明,该算法在部分目标丢失的情况下仍能有效识别目标。
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Robust recognition of targets for underwater docking of autonomous underwater vehicle
Underwater docking for an autonomous underwater vehicle is important in sense that the vehicle can stop at a docking station to recharge its battery, transfer data, and can be used for launch and recovery system. To perform docking, recognizing the station through vision is important. There are few researches conducted on underwater docking using vision to recognize targets as guidance for the underwater vehicle to home towards the station. In those researches, docking is unsuccessful when one or more of the targets are not detectable. Specifically, the image processing part failed to recognize the target if the number of target taken from a captured image is not the same as the number of target in a desired image. This paper proposes a robust recognition of targets algorithm using bounding box partitioning to overcome the aforementioned problem. Result shows that the algorithm is capable to recognize the targets even if some of the targets went missing.
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