We implemented Machine Learning (ML) techniques to advance the study of sperm whale (Physeter macrocephalus) bioacoustics. This entailed employing Convolutional Neural Networks (CNNs) to construct an echolocation click detector designed to classify spectrograms generated from sperm whale acoustic data according to the presence or absence of a click. The click detector achieved 99.5% accuracy in classifying 650 spectrograms. The successful application of CNNs to clicks reveals the potential of future studies to train CNN-based architectures to extract finer-scale details from cetacean spectrograms. Long short-term memory and gated recurrent unit recurrent neural networks were trained to perform classification tasks, including (1) “coda type ...
Passive acoustic observation of whales is an increasingly important tool for whale research. Accurat...
This paper proposes a robust system for detecting North Atlantic right whales by using deep learning...
AbstractThis paper describes ongoing work to investigate the development of a complex system designe...
We implemented Machine Learning (ML) techniques to advance the study of sperm whale (Physeter macroc...
Deep learning methods are a great machine learning technique which is mostly used in artificial neur...
Authors thank the Bureau of Ocean Energy Management for the funding of MARU deployments, Excelerate ...
Large bioacoustic archives of wild animals are an important source to identify reappearing communica...
This project evaluates the potential of Convolutional Neural Networks in classifying Right Whales' U...
Deep learning has become a major part of many system designs, from self driving cars to automatic vo...
This thesis begins by assessing the current state of marine mammal detection, specifically investiga...
Cetaceans make an important use of acoustics to socialise, travel and hunt. Therefore, their monitor...
Passive acoustic monitoring (PAM) has proven a powerful tool for the study of marine mammals, allowi...
A.M.v.B.B. acknowledges support from the Sea Mammal Research Unit at the University of St. Andrews (...
A novel approach has been developed for detecting and classifying foraging calls of two mysticete sp...
The automated acoustic detection of cetaceans in real time is an important tool to study their beha...
Passive acoustic observation of whales is an increasingly important tool for whale research. Accurat...
This paper proposes a robust system for detecting North Atlantic right whales by using deep learning...
AbstractThis paper describes ongoing work to investigate the development of a complex system designe...
We implemented Machine Learning (ML) techniques to advance the study of sperm whale (Physeter macroc...
Deep learning methods are a great machine learning technique which is mostly used in artificial neur...
Authors thank the Bureau of Ocean Energy Management for the funding of MARU deployments, Excelerate ...
Large bioacoustic archives of wild animals are an important source to identify reappearing communica...
This project evaluates the potential of Convolutional Neural Networks in classifying Right Whales' U...
Deep learning has become a major part of many system designs, from self driving cars to automatic vo...
This thesis begins by assessing the current state of marine mammal detection, specifically investiga...
Cetaceans make an important use of acoustics to socialise, travel and hunt. Therefore, their monitor...
Passive acoustic monitoring (PAM) has proven a powerful tool for the study of marine mammals, allowi...
A.M.v.B.B. acknowledges support from the Sea Mammal Research Unit at the University of St. Andrews (...
A novel approach has been developed for detecting and classifying foraging calls of two mysticete sp...
The automated acoustic detection of cetaceans in real time is an important tool to study their beha...
Passive acoustic observation of whales is an increasingly important tool for whale research. Accurat...
This paper proposes a robust system for detecting North Atlantic right whales by using deep learning...
AbstractThis paper describes ongoing work to investigate the development of a complex system designe...