This paper describes ongoing work being done at Cornell University to investigate the development of a complex system designed for extracting information from large acoustic datasets. The system, called DeLMA is based on integrating advanced machine learning with high performance computing (HPC). The goal of this work is to provide the capability to accurately detect and classify whale sounds in large acoustics datasets collected using underwater sensors. The case study for this work is focused on detecting the acoustic communication signals of the North Atlantic Right Whale, Eubalaena glacialis, and uses data collected in the Stellwagen Bank National Marine Sanctuary (SBNMS), USA. A summary of the work done for developing a complex detecti...
Deep learning methods are a great machine learning technique which is mostly used in artificial neur...
Since 2001, hundreds of thousands of hours of underwater acoustic recordings have been made througho...
Author Posting. © Acoustical Society of America, 2011. This article is posted here by permission of...
AbstractThis paper describes ongoing work to investigate the development of a complex system designe...
Vocal communication is a primary communication method of killer and pilot whales, and is used for tr...
<p>This dissertation focuses on two vital challenges in relation to whale acoustic signals: detectio...
This thesis begins by assessing the current state of marine mammal detection, specifically investiga...
A.M.v.B.B. acknowledges support from the Sea Mammal Research Unit at the University of St. Andrews (...
A three-step approach has been developed for detecting and classifying the foraging calls of the blu...
Large bioacoustic archives of wild animals are an important source to identify reappearing communica...
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...
A detector has been developed which can reliably detect right whale calls and distinguish them from ...
An unsupervised machine learning algorithm has been applied to passive acoustic monitoring datasets ...
The Littoral Acoustic Demonstration Center has collected passive acoustic monitoring data in the nor...
Deep learning methods are a great machine learning technique which is mostly used in artificial neur...
Since 2001, hundreds of thousands of hours of underwater acoustic recordings have been made througho...
Author Posting. © Acoustical Society of America, 2011. This article is posted here by permission of...
AbstractThis paper describes ongoing work to investigate the development of a complex system designe...
Vocal communication is a primary communication method of killer and pilot whales, and is used for tr...
<p>This dissertation focuses on two vital challenges in relation to whale acoustic signals: detectio...
This thesis begins by assessing the current state of marine mammal detection, specifically investiga...
A.M.v.B.B. acknowledges support from the Sea Mammal Research Unit at the University of St. Andrews (...
A three-step approach has been developed for detecting and classifying the foraging calls of the blu...
Large bioacoustic archives of wild animals are an important source to identify reappearing communica...
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...
A detector has been developed which can reliably detect right whale calls and distinguish them from ...
An unsupervised machine learning algorithm has been applied to passive acoustic monitoring datasets ...
The Littoral Acoustic Demonstration Center has collected passive acoustic monitoring data in the nor...
Deep learning methods are a great machine learning technique which is mostly used in artificial neur...
Since 2001, hundreds of thousands of hours of underwater acoustic recordings have been made througho...
Author Posting. © Acoustical Society of America, 2011. This article is posted here by permission of...