In the context of bio-acoustic sciences, call detection is a critical task for understanding the behaviour of marine mammals such as the blue whale species (Balaeonoptera musculus) considered in this work. In this paper we present an approach to blue whale call detection from an unsupervised perspective. To achieve this, we use temporal and spectral features of audio acquired with a marine autonomous recording unit. The features considered are 46-dimensional and include the mel frequency ceptrum coefficients, chromagrams, and other scalar quantities; these features were then grouped via two different clustering algorithms. Our findings confirm the suitability of the proposed approach for isolating blue whale calls from other envi...
Acoustic methods are an established technique to monitor marine mammal populations and behavior, but...
International audienceSince 2001, hundreds of thousands of hours of underwater acoustic recordings h...
International audienceThe goal of this project is to use acoustic signatures to detect, classify, an...
International audienceThis paper addresses the problem of automated detection of Z-calls emitted by ...
A three-step approach has been developed for detecting and classifying the foraging calls of the blu...
A novel approach has been developed for detecting and classifying foraging calls of two mysticete sp...
The 'BmCallDeterminations' workbook contains 42 tabs, each logging the occurrence of all blue whale ...
An unsupervised machine learning algorithm has been applied to passive acoustic monitoring datasets ...
This paper deals with the automatic detection of low-frequency Antarctic (Balaenptera musculus inter...
International audienceThe most common approach to monitor mysticete acoustic presence is to detect a...
[EN] In this work, an algorithm has been proposed for real time detection and classification of belu...
International audienceMonitoring the presence of blue whale (Balaenoptera musculus ssp.) stereotyped...
International audienceMost automatic detections of highly stereotyped baleen-whale calls such as the...
The analysis of the large volumes of data resulting from continuous and long-term monitoring of blue...
Acoustic methods are an established technique to monitor marine mammal populations and behavior, but...
International audienceSince 2001, hundreds of thousands of hours of underwater acoustic recordings h...
International audienceThe goal of this project is to use acoustic signatures to detect, classify, an...
International audienceThis paper addresses the problem of automated detection of Z-calls emitted by ...
A three-step approach has been developed for detecting and classifying the foraging calls of the blu...
A novel approach has been developed for detecting and classifying foraging calls of two mysticete sp...
The 'BmCallDeterminations' workbook contains 42 tabs, each logging the occurrence of all blue whale ...
An unsupervised machine learning algorithm has been applied to passive acoustic monitoring datasets ...
This paper deals with the automatic detection of low-frequency Antarctic (Balaenptera musculus inter...
International audienceThe most common approach to monitor mysticete acoustic presence is to detect a...
[EN] In this work, an algorithm has been proposed for real time detection and classification of belu...
International audienceMonitoring the presence of blue whale (Balaenoptera musculus ssp.) stereotyped...
International audienceMost automatic detections of highly stereotyped baleen-whale calls such as the...
The analysis of the large volumes of data resulting from continuous and long-term monitoring of blue...
Acoustic methods are an established technique to monitor marine mammal populations and behavior, but...
International audienceSince 2001, hundreds of thousands of hours of underwater acoustic recordings h...
International audienceThe goal of this project is to use acoustic signatures to detect, classify, an...