Vision-Based Autonomous Underwater Swimming in Dense Coral for Combined Collision Avoidance and Target Selection

Travis Manderson, J. A. G. Higuera, Ran Cheng, G. Dudek
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引用次数: 34

Abstract

We address the problem of learning vision-based, collision-avoiding, and target-selecting controllers in 3D, specifically in underwater environments densely populated with coral reefs. Using a highly maneuverable, dynamic, six-legged (or flippered) vehicle to swim underwater, we exploit real time visual feedback to make close-range navigation decisions that would be hard to achieve with other sensors. Our approach uses computer vision as the sole mechanism for both collision avoidance and visual target selection. In particular, we seek to swim close to the reef to make observations while avoiding both collisions and barren, coral-deprived regions. To carry out path selection while avoiding collisions, we use monocular image data processed in real time. The proposed system uses a convolutional neural network that takes an image from a forward-facing camera as input and predicts unscaled and relative path changes. The network is trained to encode our desired obstacle-avoidance and reef-exploration objectives via supervised learning from human-labeled data. The predictions from the network are transformed into absolute path changes via a combination of a temporally-smoothed proportional controller for heading targets and a low-level motor controller. This system enables safe and autonomous coral reef navigation in underwater environments. We validate our approach using an untethered and fully autonomous robot swimming through coral reef in the open ocean. Our robot successfully traverses 1000 m of the ocean floor collision-free while collecting close-up footage of coral reefs.
基于视觉的密集珊瑚自主水下游泳避碰与目标选择
我们解决了在3D中学习基于视觉、避碰和目标选择控制器的问题,特别是在珊瑚礁密集的水下环境中。我们使用高度机动、动态的六足(或鳍状)潜水器在水下游泳,利用实时视觉反馈来做出近距离导航决策,这是其他传感器难以实现的。我们的方法使用计算机视觉作为避免碰撞和视觉目标选择的唯一机制。特别是,我们试图游到靠近珊瑚礁的地方进行观察,同时避免碰撞和贫瘠的珊瑚剥夺地区。为了在避免碰撞的同时进行路径选择,我们使用了实时处理的单眼图像数据。该系统使用卷积神经网络,将前置摄像头的图像作为输入,并预测未缩放的相对路径变化。该网络经过训练,通过对人类标记数据的监督学习来编码我们想要的避障和珊瑚礁探索目标。网络的预测通过一个用于航向目标的时间平滑比例控制器和一个低级电机控制器的组合转化为绝对路径变化。该系统可实现水下环境下安全自主的珊瑚礁导航。我们用一个无系绳的完全自主的机器人在开阔的海洋中穿过珊瑚礁来验证我们的方法。我们的机器人成功地穿越了1000米的海底无碰撞,同时收集了珊瑚礁的特写镜头。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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