In this paper, we develop a novel method based on machine-learning and image processing to identify North Atlantic right whale (NARW) up-calls in the presence of high levels of ambient and interfering noise. We apply a continuous region algorithm on the spectrogram to extract the regions of interest, and then use grid masking techniques to generate a small feature set that is then used in an artificial neural network classifier to identify the NARW up-calls. It is shown that the proposed technique is effective in detecting and capturing even very faint up-calls, in the presence of ambient and interfering noises. The method is evaluated on a dataset recorded in Massachusetts Bay, United States. The dataset includes 20000 sound clips for trai...
This paper describes ongoing work being done at Cornell University to investigate the development of...
Cetaceans make an important use of acoustics to socialise, travel and hunt. Therefore, their monitor...
The following work outlines an approach for automatic detection and recognition of periodic pulse tr...
A three-step approach has been developed for detecting and classifying the foraging calls of the blu...
A detector has been developed which can reliably detect right whale calls and distinguish them from ...
The Littoral Acoustic Demonstration Center has collected passive acoustic monitoring data in the nor...
<p>This dissertation focuses on two vital challenges in relation to whale acoustic signals: detectio...
AbstractThis paper describes ongoing work to investigate the development of a complex system designe...
[EN] In this work, an algorithm has been proposed for real time detection and classification of belu...
For mitigation and monitoring of endangered North Atlantic Right whales, identifying their presence ...
This paper proposes a robust system for detecting North Atlantic right whales by using deep learning...
This project evaluates the potential of Convolutional Neural Networks in classifying Right Whales' U...
An unsupervised machine learning algorithm has been applied to passive acoustic monitoring datasets ...
Acoustic methods are an established technique to monitor marine mammal populations and behavior, but...
Passive acoustic observation of whales is an increasingly important tool for whale research. Accurat...
This paper describes ongoing work being done at Cornell University to investigate the development of...
Cetaceans make an important use of acoustics to socialise, travel and hunt. Therefore, their monitor...
The following work outlines an approach for automatic detection and recognition of periodic pulse tr...
A three-step approach has been developed for detecting and classifying the foraging calls of the blu...
A detector has been developed which can reliably detect right whale calls and distinguish them from ...
The Littoral Acoustic Demonstration Center has collected passive acoustic monitoring data in the nor...
<p>This dissertation focuses on two vital challenges in relation to whale acoustic signals: detectio...
AbstractThis paper describes ongoing work to investigate the development of a complex system designe...
[EN] In this work, an algorithm has been proposed for real time detection and classification of belu...
For mitigation and monitoring of endangered North Atlantic Right whales, identifying their presence ...
This paper proposes a robust system for detecting North Atlantic right whales by using deep learning...
This project evaluates the potential of Convolutional Neural Networks in classifying Right Whales' U...
An unsupervised machine learning algorithm has been applied to passive acoustic monitoring datasets ...
Acoustic methods are an established technique to monitor marine mammal populations and behavior, but...
Passive acoustic observation of whales is an increasingly important tool for whale research. Accurat...
This paper describes ongoing work being done at Cornell University to investigate the development of...
Cetaceans make an important use of acoustics to socialise, travel and hunt. Therefore, their monitor...
The following work outlines an approach for automatic detection and recognition of periodic pulse tr...