AINEROApr 17, 2018

Learning Awareness Models

arXiv:1804.06318v149 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of building awareness models for agents in uncertain environments, offering a novel approach to object representation without external training signals, though it is incremental in applying existing methods to new robotic data.

The paper tackles the problem of an agent learning to represent external objects using only internal body signals, showing that models trained to predict proprioceptive information can represent objects through their effects on the body, achieving predictions over 132 sensor readings up to 100 steps into the future.

We consider the setting of an agent with a fixed body interacting with an unknown and uncertain external world. We show that models trained to predict proprioceptive information about the agent's body come to represent objects in the external world. In spite of being trained with only internally available signals, these dynamic body models come to represent external objects through the necessity of predicting their effects on the agent's own body. That is, the model learns holistic persistent representations of objects in the world, even though the only training signals are body signals. Our dynamics model is able to successfully predict distributions over 132 sensor readings over 100 steps into the future and we demonstrate that even when the body is no longer in contact with an object, the latent variables of the dynamics model continue to represent its shape. We show that active data collection by maximizing the entropy of predictions about the body---touch sensors, proprioception and vestibular information---leads to learning of dynamic models that show superior performance when used for control. We also collect data from a real robotic hand and show that the same models can be used to answer questions about properties of objects in the real world. Videos with qualitative results of our models are available at https://goo.gl/mZuqAV.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes