Affordance Prediction via Learned Object Attributes
نویسندگان
چکیده
We present a novel method for learning and predicting the affordances of an object based on its physical and visual attributes. Affordance prediction is a key task in autonomous robot learning, as it allows a robot to reason about the actions it can perform in order to accomplish its goals. Previous approaches to affordance prediction have either learned direct mappings from visual features to affordances, or have introduced object categories as an intermediate representation. In this paper, we argue that physical and visual attributes provide a more appropriate mid-level representation for affordance prediction, because they support informationsharing between affordances and objects, resulting in superior generalization performance. In particular, affordances are more likely to be correlated with the attributes of an object than they are with its visual appearance or a linguistically-derived object category. We provide preliminary validation of our method experimentally, and present empirical comparisons to both the direct and category-based approaches of affordance prediction. Our encouraging results suggest the promise of the attributebased approach to affordance prediction.
منابع مشابه
Reasoning about Object Affordances in a Knowledge Base Representation
Reasoning about objects and their affordances is a fundamental problem for visual intelligence. Most of the previous work casts this problem as a classification task where separate classifiers are trained to label objects, recognize attributes, or assign affordances. In this work, we consider the problem of object affordance reasoning using a knowledge base representation. Diverse information o...
متن کاملAffordance based imitation bootstrapping with motionese
Learning through self-exploration and imitation are crucial mechanisms in developing sensorimotor skills for human infants. In our previous work, we showed that a robot can self-discover behavior primitives and learn object affordances similar to infants. Then building predictive mechanisms at the affordance level allowed movement planning and simple goal-level imitation on our robot. The work ...
متن کاملObject-object interaction affordance learning
This paper presents a novel object–object affordance learning approach that enables intelligent robots to learn the interactive functionalities of objects from human demonstrations in everyday environments. Instead of considering a single object, we model the interactive motions between paired objects in a human–object–objectway. The innate interaction-affordance knowledge of the paired objects...
متن کاملAspect Transition Graph: an Affordance-Based Model
In this work we introduce the Aspect Transition Graph (ATG), an affordance-based model that is grounded in the robot’s own actions and perceptions. An ATG summarizes how observations of an object or the environment changes in the course of interaction. Through the Robonaut 2 simulator, we demonstrate that by exploiting these learned models the robot can recognize objects and manipulate them to ...
متن کاملThe Aspect Transition Graph: An Affordance-Based Model
In this work we introduce the Aspect Transition Graph (ATG), an affordance-based model that is grounded in the robot’s own actions and perceptions. An ATG summarizes how observations of an object or the environment changes in the course of interaction. Through the Robonaut 2 simulator, we demonstrate that by exploiting these learned models the robot can recognize objects and manipulate them to ...
متن کامل