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Dimensionality reduction for acoustic vehicle classification with spectral embedding (1705.09869v2)
Published 27 May 2017 in stat.ML, cs.LG, and physics.data-an
Abstract: We propose a method for recognizing moving vehicles, using data from roadside audio sensors. This problem has applications ranging widely, from traffic analysis to surveillance. We extract a frequency signature from the audio signal using a short-time Fourier transform, and treat each time window as an individual data point to be classified. By applying a spectral embedding, we decrease the dimensionality of the data sufficiently for K-nearest neighbors to provide accurate vehicle identification.