Classification of song similarities and differences in one bird species is a subtle problem where the actual answer is more or less unknown. In this paper, the singular vectors when decomposing the multitaper spectrogram are proposed to be used as feature vectors for classification. The advantage is especially for signals consisting of several components which have stochastic variations in the amplitudes as well as the time- and frequency locations. The approach is evaluated and compared to other methods for simulated data and bird song syllables recorded from the great reed warbler. The results show that in classification where there are strong similar components in all the signals but where the structure of weaker components are differing...
Automatic classification of bird species based on their vocalizations is a topic of crucial relevanc...
Bird vocalisations are highly varied, containing natural variation across a range of timescales. In ...
The ability to automatically distinguish one bird species from another based on acoustic recordings ...
A novel feature set for low-dimensional signal representation, designed for classification or cluste...
A method for syllable classification of the Great Reed Warbler (Acrocephalus arundinaceus) has been ...
Feature extraction for Acoustic Bird Species Classification (ABSC) tasks has traditionally been base...
Feature extraction for Acoustic Bird Species Classification (ABSC) tasks has traditionally been base...
The goal of this work was to create a model for characterizing bird species through recordings of th...
Automatic species classification of birds from their sound is a computational tool of increasing imp...
Acoustic signals are rich in information content. For humans the skill of listening to sounds and ex...
In this paper we propose a method to automatically identify birds from the sounds they generate. Fir...
A new method for automatic classification of bird songs is proposed. This method is based on trackin...
Birdsong provides a unique model for understanding the behavioral and neural bases underlying comple...
In this paper we explore the application of data mining techniques to the problem of acoustic recogn...
<div><p>Birdsong provides a unique model for understanding the behavioral and neural bases underlyin...
Automatic classification of bird species based on their vocalizations is a topic of crucial relevanc...
Bird vocalisations are highly varied, containing natural variation across a range of timescales. In ...
The ability to automatically distinguish one bird species from another based on acoustic recordings ...
A novel feature set for low-dimensional signal representation, designed for classification or cluste...
A method for syllable classification of the Great Reed Warbler (Acrocephalus arundinaceus) has been ...
Feature extraction for Acoustic Bird Species Classification (ABSC) tasks has traditionally been base...
Feature extraction for Acoustic Bird Species Classification (ABSC) tasks has traditionally been base...
The goal of this work was to create a model for characterizing bird species through recordings of th...
Automatic species classification of birds from their sound is a computational tool of increasing imp...
Acoustic signals are rich in information content. For humans the skill of listening to sounds and ex...
In this paper we propose a method to automatically identify birds from the sounds they generate. Fir...
A new method for automatic classification of bird songs is proposed. This method is based on trackin...
Birdsong provides a unique model for understanding the behavioral and neural bases underlying comple...
In this paper we explore the application of data mining techniques to the problem of acoustic recogn...
<div><p>Birdsong provides a unique model for understanding the behavioral and neural bases underlyin...
Automatic classification of bird species based on their vocalizations is a topic of crucial relevanc...
Bird vocalisations are highly varied, containing natural variation across a range of timescales. In ...
The ability to automatically distinguish one bird species from another based on acoustic recordings ...