Adding Intuitive Physics to Neural-Symbolic Capsules Using Interaction Networks

05/23/2019
by   Michael Kissner, et al.
0

Many current methods to learn intuitive physics are based on interaction networks and similar approaches. However, they rely on information that has proven difficult to estimate directly from image data in the past. We aim to narrow this gap by inferring all the semantic information needed from raw pixel data in the form of a scene-graph. Our approach is based on neural-symbolic capsules, which identify which objects in the scene are static, dynamic, elastic or rigid, possible joints between them, as well as their collision information. By integrating all this with interaction networks, we demonstrate how our method is able to learn intuitive physics directly from image sequences and apply its knowledge to new scenes and objects, resulting in an inverse-simulation pipeline.

READ FULL TEXT
research
08/05/2020

A Neural-Symbolic Framework for Mental Simulation

We present a neural-symbolic framework for observing the environment and...
research
04/30/2020

Occlusion resistant learning of intuitive physics from videos

To reach human performance on complex tasks, a key ability for artificia...
research
04/22/2023

3D-IntPhys: Towards More Generalized 3D-grounded Visual Intuitive Physics under Challenging Scenes

Given a visual scene, humans have strong intuitions about how a scene ca...
research
06/23/2016

Learning to Poke by Poking: Experiential Learning of Intuitive Physics

We investigate an experiential learning paradigm for acquiring an intern...
research
08/09/2017

Interacting with Acoustic Simulation and Fabrication

Incorporating accurate physics-based simulation into interactive design ...
research
05/14/2018

Unsupervised Intuitive Physics from Visual Observations

While learning models of intuitive physics is an increasingly active are...
research
03/31/2023

3D Human Pose Estimation via Intuitive Physics

Estimating 3D humans from images often produces implausible bodies that ...

Please sign up or login with your details

Forgot password? Click here to reset