Interpretable Latent Spaces for Learning from Demonstration

07/17/2018
by   Yordan Hristov, et al.
2

Effective human-robot interaction, such as in robot learning from human demonstration, requires the learning agent to be able to ground abstract concepts (such as those contained within instructions) in a corresponding high-dimensional sensory input stream from the world. Models such as deep neural networks, with high capacity through their large parameter spaces, can be used to compress the high-dimensional sensory data to lower dimensional representations. These low-dimensional representations facilitate symbol grounding, but may not guarantee that the representation would be human-interpretable. We propose a method which utilises the grouping of user-defined symbols and their corresponding sensory observations in order to align the learnt compressed latent representation with the semantic notions contained in the abstract labels. We demonstrate this through experiments with both simulated and real-world object data, showing that such alignment can be achieved in a process of physical symbol grounding.

READ FULL TEXT

page 2

page 6

page 7

research
07/31/2019

Disentangled Relational Representations for Explaining and Learning from Demonstration

Learning from demonstration is an effective method for human users to in...
research
12/29/2020

Emergent Symbols through Binding in External Memory

A key aspect of human intelligence is the ability to infer abstract rule...
research
06/01/1999

The Symbol Grounding Problem

How can the semantic interpretation of a formal symbol system be made in...
research
06/16/2020

Learning from Demonstration with Weakly Supervised Disentanglement

Robotic manipulation tasks, such as wiping with a soft sponge, require c...
research
03/06/2019

Towards Learning Abstract Representations for Locomotion Planning in High-dimensional State Spaces

Ground robots which are able to navigate a variety of terrains are neede...
research
02/05/2018

Background subtraction using the factored 3-way restricted Boltzmann machines

In this paper, we proposed a method for reconstructing the 3D model base...
research
06/30/2020

A Framework for Learning Invariant Physical Relations in Multimodal Sensory Processing

Perceptual learning enables humans to recognize and represent stimuli in...

Please sign up or login with your details

Forgot password? Click here to reset