Published May 30, 2013 | Version v1
Journal article Open

Exploring Sound Signature for Vehicle Detection and Classification Using ANN

  • 1. Rajiv Gandhi Institute of Technology, India

Description

This paper attempts to explore the possibility of using sound signatures for vehicle detection and classification purposes. Sound emitted by vehicles are captured for a two lane undivided road carrying moderate traffic. Simultaneous arrival of different types vehicles, overtaking at the study location, sound of horns, random but identifiable back ground noises, continuous high energy noises on the back ground are the different challenges encountered in the data collection. Different features were explored out of which smoothed log energy was found to be useful for automatic vehicle detection by locating peaks. Melfrequency ceptral coefficients extracted from fixed regions around the detected peaks along with the manual vehicle labels are utilised to train an Artificial Neural Network (ANN). The classifier for four broad classes heavy, medium, light and horns was trained. The ANN classifier developed was able to predict categories well.

Files

4213ijsc03.pdf

Files (689.3 kB)

Name Size Download all
md5:a29335748dadc9fb7bfc3bd1bbcb6aef
689.3 kB Preview Download