Abstract

The reduction in size, power consumption and price of many sensor devices has enabled the deployment of many sensor networks that can be used to monitor and control several aspects of various habitats. More specifically, the analysis of sounds has attracted a huge interest in urban and wildlife environments where the classification of the different signals has become a major issue. Various algorithms have been described for this purpose, a number of which frame the sound and classify these frames, while others take advantage of the sequential information embedded in a sound signal. In the paper, a new algorithm is proposed that, while maintaining the frame-classification advantages, adds a new phase that considers and classifies the score series derived after frame labelling. These score series are represented using cepstral coefficients and classified using standard machine-learning classifiers. The proposed algorithm has been applied to a dataset of anuran calls and its results compared to the performance obtained in previous experiments on sensor networks. The main outcome of our research is that the consideration of score series strongly outperforms other algorithms and attains outstanding performance despite the noisy background commonly encountered in this kind of application.

Highlights

  • In environmental control operations, for example using the acoustic emission spectrum of forest fires to classify the type of forest fire [4]

  • Sometimes it is not convenient to analyse manually the data provided by modern sensor networks (SN), since it is usually large volumes of data

  • Each node incorporates an audio sensor for the identification of anuran classes and a set of meteorological sensors that measure temperature, humidity, etc., necessary to describe the climatic conditions in which the identification of the sound is made

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Summary

Introduction

There has been a very significant increase in the number of devices available for monitoring and analysing environmental sounds. This increase has occurred in urban areas [1,2,3]. The problem of analysis and classification of the sounds emitted by some species of the animal kingdom is one of the main applications of the monitoring of environmental sounds. This application has aroused great interest for experts, for several reasons. Sometimes it is not convenient to analyse manually the data provided by modern sensor networks (SN), since it is usually large volumes of data

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