On Exploiting Haptic Cues for Self-Supervised Learning of Depth-Based Robot Navigation Affordances
نویسندگان
چکیده
This article presents a method for online learning of robot navigation a↵ordances from spatiotemporally correlated haptic and depth cues. The method allows the robot to incrementally learn which objects present in the environment are actually traversable. This is a critical requirement for any wheeled robot performing in natural environments, in which the inability to discern vegetation from non-traversable obstacles frequently hampers terrain progression. A wheeled robot prototype was developed in order to experimentally validate the proposed method. The robot prototype obtains haptic and depth sensory feedback from a pan-tilt telescopic antenna and from a structured light sensor, respectively. With the presented method, the robot learns a mapping between objects’ descriptors, given the range data provided by the sensor, and objects’ sti↵ness, as estimated from the interaction between the antenna and the object. Learning confidence estimation is considered in order to progressively reduce the number of required physical interactions with acquainted objects. To raise the number of meaningful interactions per object under time pressure, the several segments of the object under analysis are prioritised according to a set of morphological criteria. Field trials show the ability of the robot to progressively learn which elements of the environment are traversable. keywords: autonomous robots, self-supervised learning, a↵ordances, terrain assessment, depth sensing, tactile sensing
منابع مشابه
What can I do with this tool? Self-supervised learning of tool affordances from their 3D geometry
The ability to use tools can significantly increase the range of activities that an agent is capable of. Humans start using external objects since an early age to accomplish their goals, learning from interaction and observation the relationship between the objects used, their own actions, and the resulting effects, i.e., the tool affordances. Robots capable of autonomously learning affordances...
متن کاملDynamic Potential Fields for Dexterous Tactile Exploration
Haptic exploration of unknown objects is of great importance for acquiring multimodal object representations, which enable a humanoid robot to autonomously execute grasping and manipulation tasks. In this paper we present our ongoing work on tactile object exploration with an anthropomorphic five-finger robot hand. In particular we present a method for guiding the hand along the surface of an u...
متن کاملNavigation of a Mobile Robot Using Virtual Potential Field and Artificial Neural Network
Mobile robot navigation is one of the basic problems in robotics. In this paper, a new approach is proposed for autonomous mobile robot navigation in an unknown environment. The proposed approach is based on learning virtual parallel paths that propel the mobile robot toward the track using a multi-layer, feed-forward neural network. For training, a human operator navigates the mobile robot in ...
متن کاملAnalyzing differences between teachers when learning object affordances via guided exploration
Our work focuses on robots deployed in human environments. These robots, which will need specialized object manipulation skills, should leverage end-users to efficiently learn the affordances of objects in their environment. This approach is promising because prior work has shown that people naturally focus on showing salient aspects of objects when providing demonstrations. In our work, we use...
متن کاملDynamic Obstacle Avoidance by Distributed Algorithm based on Reinforcement Learning (RESEARCH NOTE)
In this paper we focus on the application of reinforcement learning to obstacle avoidance in dynamic Environments in wireless sensor networks. A distributed algorithm based on reinforcement learning is developed for sensor networks to guide mobile robot through the dynamic obstacles. The sensor network models the danger of the area under coverage as obstacles, and has the property of adoption o...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
- Journal of Intelligent and Robotic Systems
دوره 80 شماره
صفحات -
تاریخ انتشار 2015