Convolutional neural network-based real-time ROV detection using forward-looking sonar image

Juhwan Kim, Son-cheol Yu
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引用次数: 54

Abstract

Agent system is strategy to enhance the underwater manipulation. The conventional manipulation is generally robot arm-based configuration which has singular points. On the other hand, the agent system is an armless manipulation that the agent vehicle works as the end-effector. If the location of the agent can be measured, the end effector is able to be place to any position. To implement this system, the method of an agent vehicle localization is proposed. The method uses the sonar images of moving agent obtained by forward-looking sonar. To detect the location of the agent in the sonar images, the convolutional neural network is applied. We applied the state-of-art object-detection algorithm to the agent vehicle system. The fast object-detection algorithm based on neural network can fulfil the real-time detection and show the remarkable validity. It means the underwater robot can begin navigation under its feed-back. Through field experiment, we confirm the proposed method can detect and track the agent in the successive sonar images.
基于卷积神经网络的前视声纳图像ROV实时探测
Agent系统是提高水下操纵能力的一种策略。传统的操作方式一般是基于具有奇异点的机械臂构型。另一方面,agent系统是一种以agent车辆作为末端执行器的无臂操纵。如果可以测量代理的位置,则末端执行器可以放置到任何位置。为了实现该系统,提出了agent车辆定位方法。该方法利用前视声纳获取的运动体声纳图像。为了检测声纳图像中智能体的位置,采用了卷积神经网络。我们将最先进的目标检测算法应用于代理车辆系统。基于神经网络的快速目标检测算法能够实现实时检测,显示出显著的有效性。这意味着水下机器人可以在它的反馈下开始导航。通过现场实验,我们证实了该方法可以在连续声纳图像中检测和跟踪agent。
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