Using Features at Multiple Temporal and Spatial Resolutions to Predict Human Behavior in Real Time

11/12/2022
by   Liang Zhang, et al.
0

When performing complex tasks, humans naturally reason at multiple temporal and spatial resolutions simultaneously. We contend that for an artificially intelligent agent to effectively model human teammates, i.e., demonstrate computational theory of mind (ToM), it should do the same. In this paper, we present an approach for integrating high and low-resolution spatial and temporal information to predict human behavior in real time and evaluate it on data collected from human subjects performing simulated urban search and rescue (USAR) missions in a Minecraft-based environment. Our model composes neural networks for high and low-resolution feature extraction with a neural network for behavior prediction, with all three networks trained simultaneously. The high-resolution extractor encodes dynamically changing goals robustly by taking as input the Manhattan distance difference between the humans' Minecraft avatars and candidate goals in the environment for the latest few actions, computed from a high-resolution gridworld representation. In contrast, the low-resolution extractor encodes participants' historical behavior using a historical state matrix computed from a low-resolution graph representation. Through supervised learning, our model acquires a robust prior for human behavior prediction, and can effectively deal with long-term observations. Our experimental results demonstrate that our method significantly improves prediction accuracy compared to approaches that only use high-resolution information.

READ FULL TEXT
research
10/13/2022

U-HRNet: Delving into Improving Semantic Representation of High Resolution Network for Dense Prediction

High resolution and advanced semantic representation are both vital for ...
research
07/19/2019

A Multi-Scale Mapping Approach Based on a Deep Learning CNN Model for Reconstructing High-Resolution Urban DEMs

The shortage of high-resolution urban digital elevation model (DEM) data...
research
08/15/2018

DeepDownscale: a Deep Learning Strategy for High-Resolution Weather Forecast

Running high-resolution physical models is computationally expensive and...
research
11/16/2022

Multi-Timescale Modeling of Human Behavior

In recent years, the role of artificially intelligent (AI) agents has ev...
research
04/22/2015

Rounding Methods for Neural Networks with Low Resolution Synaptic Weights

Neural network algorithms simulated on standard computing platforms typi...
research
12/31/2021

Learned Coarse Models for Efficient Turbulence Simulation

Turbulence simulation with classical numerical solvers requires very hig...
research
10/25/2018

DeepDPM: Dynamic Population Mapping via Deep Neural Network

Dynamic high resolution data on human population distribution is of grea...

Please sign up or login with your details

Forgot password? Click here to reset