Back to articles
Articles
Volume: 28 | Article ID: art00003
Image
Pedestrian’s Intention Prediction Based on Fuzzy Finite Automata and Spatial-temporal Features
  DOI :  10.2352/ISSN.2470-1173.2016.3.VSTIA-512  Published OnlineFebruary 2016
Abstract

In this research, we present a novel Fuzzy Finite Automat (FFA) for predicting pedestrian’s intention for advanced driver assistant system. Because dangerous pedestrians generally have a higher moving velocity and lateral moving direction than the ‘standing’ pedestrian as well as tracking trajectory in the time domain, we estimate the state probability of pedestrian by considering spatial domain such as pedestrian’s face (looking back or not). To consider the above characteristics over temporal and spatial domain, ‘distance between a pedestrian and curb’, ‘distance between a pedestrian and vehicle’, and ‘head orientation and orientation variation’, and ‘speed of a pedestrian’ are used to generate probability density functions for the state transition value. In this paper, the four states connected with transitions of FFA are defined as Walking-SW, Standing, W-Crossing, and R-Crossing, and these states correspond to “walking sidewalk,” “standing sidewalk,” “walking crossing,” and “running crossing,” respectively. The state changes are controlled by various transition probabilities. There is no standard dataset for evaluating prediction performance using a stereo thermal camera, and we therefore created a KMU prediction dataset. The proposed algorithm was successfully applied to various pedestrian video sequences of the dataset, and showed an accurate prediction performance.

Subject Areas :
Views 67
Downloads 1
 articleview.views 67
 articleview.downloads 1
  Cite this article 

Joon-Young Kwak, Eun-Ju Lee, ByoungChul Ko, Mira Jeong, "Pedestrian’s Intention Prediction Based on Fuzzy Finite Automata and Spatial-temporal Featuresin Proc. IS&T Int’l. Symp. on Electronic Imaging: Video Surveillance and Transportation Imaging Applications,  2016,  https://doi.org/10.2352/ISSN.2470-1173.2016.3.VSTIA-512

 Copy citation
  Copyright statement 
Copyright © Society for Imaging Science and Technology 2016
72010604
Electronic Imaging
2470-1173
Society for Imaging Science and Technology
7003 Kilworth Lane, Springfield, VA 22151 USA