Research Projects

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Research Projects

METRANS
STATUS: Complete YEAR: 2014 TOPIC AREA: Integrating freight and passenger systems CENTER: METRANS UTC

Development of Micro Wireless Sensor Platforms for Collecting Data of Passenger-Freight Interactions

Project Summary

Project number: MT-14-06

Funding source: Caltrans

Contract number: 65A0533

Funding amount: $34,995

Performance period: 1/1/2015 - 12/31/2015

 

Link to full seminar videohttps://youtu.be/IuJOP4OBsDE

 

Project description

In this report, we propose an in-node microprocessor-based vehicle classification approach to analyze and determine the types of vehicles passing over a 3-axis magnetometer sensor. Our approach for vehicle classification utilizes J48 classification algorithm implemented in Weka (a machine learning software suite). J48 is a Quinlan's C4.5 algorithm, an extension of decision tree machine learning based on ID3 algorithm. The decision tree model is generated from a set of features extracted from vehicles passing over the 3-axis sensor. The features are attributes provided with correct classifications to the J48 training algorithm to generate a decision tree model with varying degrees of classification rates based on cross-validation. Ideally, using fewer attributes to generate the model allows for the highest computational efficiency due to fewer features needed to be calculated while minimalizing the tree with fewer branches. The generated tree model can then be easily implemented using nested if-loops in any language on a multitude of microprocessors. In addition, setting an adaptive baseline to negate the effects of the background magnetic field allows reuse of the same tree model in multiple environments. The result of our experiment shows that the vehicle classification system is effective and efficient with the accuracy at nearly 100%.

 

Research seminar highlights video

P.I. NAME & ADDRESS

Mohammad Mozumdar
Assistant Professor, Department of Electrical Engineering; College of Engineering
1250 Bellflower Blvd.
ECS-521Long Beach, CA 90840-8306
United States
[email protected]