Predicting Vehicle Trajectory  book cover
1st Edition

Predicting Vehicle Trajectory

ISBN 9781138030190
Published March 1, 2017 by CRC Press
190 Pages

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Book Description

This book concentrates on improving the prediction of a vehicle’s future trajectory, particularly on non-straight paths. Having an accurate prediction of where a vehicle is heading is crucial for the system to reliably determine possible path intersections of more than one vehicle at the same time. The US DOT will be mandating that all vehicle manufacturers begin implementing V2V and V2I systems, so very soon collision avoidance systems will no longer rely on line of sight sensors, but instead will be able to take into account another vehicle’s spatial movements to determine if the future trajectories of the vehicles will intersect at the same time. Furthermore, the book introduces the reader to some improvements when predicting the future trajectory of a vehicle and presents a novel temporary solution on how to speed up the implementation of such V2V collision avoidance systems. Additionally, it evaluates whether smartphones can be used for trajectory predictions, in an attempt to populate a V2V collision avoidance system faster than a vehicle manufacturer can.

Table of Contents



CHAPTER 1: Improving Estimation of Vehicle’s Trajectory Using Latest Global Positioning System with

Kalman Filtering

1.1. Introduction

1.2. Kalman Filter

1.3. Interacting Multiple Models Estimation

1.4. Geographical Information System

1.5. Experimental Results

1.6. Conclusions

1.7. References

CHAPTER 2: Asynchronous Heterogeneous Sensor Fusion using Dead Reckoning and Kalman Filters

2.1. Introduction

2.2. Position Estimation Techniques

2.3. Dead Reckoning with Dynamic Error (DRWDE) using Kalman Filters

2.4. Evaluation Criteria

2.5. Experimental Performance of the DRWDE System

2.6. Conclusions

2.7. References

CHAPTER 3: Can Smartphones Fill in the V2V/V2I Implementation Gap?

3.1. Introduction

3.2. Position Estimation with Kalman Filters

3.3. Position Estimation Framework Using GPS and Accelerometer Sensors

3.4. Car and Smartphone Sensors Setup for a V2V/V2I System

3.5. Evaluation Criteria

3.6. Experimental Evaluation

3.7. Conclusions

3.8. References

CHAPTER 4: Conclusions


A.1 Acronym Definitions

A.2 Symbol Definitions

A.3 Mathematical limitation for improved estimations

A.4 Taylor polynomial representation with its respective error

A.5 Proof of the expected value calculations

A.6 Representative Visual Basic code

A.7 Representative Matlab code

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Cesar Barrios received a B.S. (1999) and an M.S. (2001) in electrical engineering from the New Jersey Institute of Technology, and a Ph.D. degree (2014) in electrical engineering from the University of Vermont. He worked for IBM after graduating with his B.S. degree in 1999, and since 2015 he has been working for GLOBALFOUNDRIES. He began in the Information Technology field and has since moved into Semiconductor Research and Development.

Yuichi Motai received his B.Eng. degree in instrumentation engineering from Keio University, Tokyo, Japan, in 1991, his M.Eng. degree in applied systems science from Kyoto University, Kyoto, Japan, in 1993, and his Ph.D. degree in electrical and computer engineering from Purdue University, West Lafayette, IN, U.S.A., in 2002. He is currently an Associate Professor of Electrical and Computer Engineering at Virginia Commonwealth University, Richmond, VA, USA. His research interests include the broad area of sensory intelligence (particularly in intelligent vehicle), pattern recognition, computer vision, and sensory-based robotics.


"I found specifically very important in this book the research conducted by the authors to properly handle error accumulation from missing data from offline sensors, and running the system at the fastest rate possible greatly reducing the prediction errors in non-straight paths (which are the harder task to predict). Moreover, I found very interesting the idea of using every-day equipment (smartphones) as a temporary (yet effective) solution to enable older vehicles to V2V and V2I technologies. It is also very important that the evaluation revealed that, in some cases, the smartphone prediction errors are similar to more expensive sensors in V2I. This book addresses solutions specifically for improved trajectory prediction in traffic networks. There is no question that this short book may be a valuable handbook for engineers, especially those who work on the specific problem trying to engage as much as possible users/vehicles in the V2V or V2I ecosystem."
IEEE Intelligent Transportation Systems Magazine, Fall 2017

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