Cross Scene Prediction via Modeling Dynamic Correlation using Latent Space Shared Auto-Encoders

03/31/2020
by   Shaochi Hu, et al.
0

This work addresses on the following problem: given a set of unsynchronized history observations of two scenes that are correlative on their dynamic changes, the purpose is to learn a cross-scene predictor, so that with the observation of one scene, a robot can onlinely predict the dynamic state of another. A method is proposed to solve the problem via modeling dynamic correlation using latent space shared auto-encoders. Assuming that the inherent correlation of scene dynamics can be represented by shared latent space, where a common latent state is reached if the observations of both scenes are at an approximate time, a learning model is developed by connecting two auto-encoders through the latent space, and a prediction model is built by concatenating the encoder of the input scene with the decoder of the target one. Simulation datasets are generated imitating the dynamic flows at two adjacent gates of a campus, where the dynamic changes are triggered by a common working and teaching schedule. Similar scenarios can also be found at successive intersections on a single road, gates of a subway station, etc. Accuracy of cross-scene prediction is examined at various conditions of scene correlation and pairwise observations. Potentials of the proposed method are demonstrated by comparing with conventional end-to-end methods and linear predictions.

READ FULL TEXT

page 1

page 4

research
02/24/2022

Learning Multi-Object Dynamics with Compositional Neural Radiance Fields

We present a method to learn compositional predictive models from image ...
research
02/11/2018

On the Latent Space of Wasserstein Auto-Encoders

We study the role of latent space dimensionality in Wasserstein auto-enc...
research
01/25/2021

Temporal Latent Auto-Encoder: A Method for Probabilistic Multivariate Time Series Forecasting

Probabilistic forecasting of high dimensional multivariate time series i...
research
04/18/2019

Catch Me If You Can

As advances in signature recognition have reached a new plateau of perfo...
research
06/10/2020

To Regularize or Not To Regularize? The Bias Variance Trade-off in Regularized AEs

Regularized Auto-Encoders (AE) form a rich class of methods within the l...
research
10/01/2021

Unsupervised Belief Representation Learning in Polarized Networks with Information-Theoretic Variational Graph Auto-Encoders

This paper develops a novel unsupervised algorithm for belief representa...
research
02/06/2023

Probabilistic Contrastive Learning Recovers the Correct Aleatoric Uncertainty of Ambiguous Inputs

Contrastively trained encoders have recently been proven to invert the d...

Please sign up or login with your details

Forgot password? Click here to reset