DeepAI AI Chat
Log In Sign Up

Predicting Geographic Information with Neural Cellular Automata

09/20/2020
by   Mingxiang Chen, et al.
0

This paper presents a novel framework using neural cellular automata (NCA) to regenerate and predict geographic information. The model extends the idea of using NCA to generate/regenerate a specific image by training the model with various geographic data, and thus, taking the traffic condition map as an example, the model is able to predict traffic conditions by giving certain induction information. Our research verified the analogy between NCA and gene in biology, while the innovation of the model significantly widens the boundary of possible applications based on NCAs. From our experimental results, the model shows great potentials in its usability and versatility which are not available in previous studies. The code for model implementation is available at https://redacted.

READ FULL TEXT

page 4

page 5

10/10/2020

Image Generation With Neural Cellular Automatas

In this paper, we propose a novel approach to generate images (or other ...
12/22/2013

An Efficient Edge Detection Technique by Two Dimensional Rectangular Cellular Automata

This paper proposes a new pattern of two dimensional cellular automata l...
11/03/2018

Automaticity and invariant measures of linear cellular automata

We show that spacetime diagrams of linear cellular automata Φ with (-p)-...
03/27/2021

Generalization over different cellular automata rules learned by a deep feed-forward neural network

To test generalization ability of a class of deep neural networks, we ra...
07/19/2021

Generative Adversarial Neural Cellular Automata

Motivated by the interaction between cells, the recently introduced conc...
07/10/2009

Modeling self-organizing traffic lights with elementary cellular automata

There have been several highway traffic models proposed based on cellula...
11/18/2022

A Network Classification Method based on Density Time Evolution Patterns Extracted from Network Automata

Network modeling has proven to be an efficient tool for many interdiscip...