Vehicle sound signature recognition by frequency vector principal component analysis - Robotics Institute Carnegie Mellon University

Vehicle sound signature recognition by frequency vector principal component analysis

Huadong Wu, Mel Siegel, and Pradeep Khosla
Journal Article, IEEE Transactions on Instrumentation and Measurement, Vol. 48, No. 5, pp. 1005 - 1009, October, 1999

Abstract

The sound of a working vehicle provides an important clue to the vehicle type. In this paper, we introduce the "eigenfaces method," originally used in human face recognition, to model the sound frequency distribution features. We show that it can be a simple and reliable acoustic identification method if the training samples can be properly chosen and categorized. We treat the frequency spectrum in a 200 ms time interval (a "frame") as a vector in a high-dimensional frequency feature space. In this space, we study the vector distribution for each kind of vehicle sound produced under similar working conditions. A collection of typical sound samples is used as the training data set. The mean vector and the most important principal component eigenvectors of the covariance matrix of the zero-mean-adjusted samples together characterize its sound signature. When a new zero-mean-adjusted sample is projected into the principal component eigenvector directions, a small residual vector indicates that the unknown vehicle sound can be well characterized in terms of the training data set.

BibTeX

@article{Wu-1999-15049,
author = {Huadong Wu and Mel Siegel and Pradeep Khosla},
title = {Vehicle sound signature recognition by frequency vector principal component analysis},
journal = {IEEE Transactions on Instrumentation and Measurement},
year = {1999},
month = {October},
volume = {48},
number = {5},
pages = {1005 - 1009},
}