The visuomotor system of any animal is critical for its survival, and the development of a complex one within humans is large factor in our success as a species on Earth. This system is an essential part of our ability to adapt to our environment. We use this system continuously throughout the day, when picking something up, or walking around while avoiding bumping into objects. Equipping robots with such capabilities will help produce more intelligent locomotion with the ability to more easily understand their surroundings and to move safely. In particular, such capabilities are desirable for traversing the lunar surface, as it is full of hazardous obstacles, such as rocks. These obstacles need to be identified and avoided in real time. This paper seeks to demonstrate the development of a visuomotor system within a robot for navigation and obstacle avoidance, with complex rock shaped objects representing hazards. Our approach uses deep reinforcement learning with only image data. In this paper, we compare the results from several neural network architectures and a preprocessing methodology which includes producing a segmented image and downsampling.
翻译:任何动物的表面运动系统都对其生存至关重要,而人类内部的复杂系统的发展是我们作为地球上的物种取得成功的很大因素。这个系统是我们适应环境的能力的重要组成部分。我们每天不断使用这个系统,在采集某种东西时,或在绕行时不断使用这个系统,避免撞到物体。用这种能力装备机器人将有助于产生更智能的移动机动,使其能更容易地了解周围环境并安全地移动。特别是,这种能力对于穿越月球表面是可取的,因为月球表面充满着危险的障碍,例如岩石。这些障碍需要实时查明并避免。本文试图展示在机器人内开发一种表面运动系统,以便进行导航和避免障碍,而复杂的岩石形状物体代表着危险。我们的方法只是用图像数据来进行深度增强学习。在本文中,我们比较了几个神经网络结构的结果和一种预处理方法,其中包括产生分块图像和冲压。