In recent years, the field of computational sustainability has striven to apply artificial intelligence techniques to solve ecological and environmental problems. In ecology, a key issue for the safeguarding of our planet is the monitoring of biodiversity. Automated acoustic recognition of species aims to provide a cost-effective method for biodiversity monitoring. This is particularly appealing for detecting endangered animals with a distinctive call, such as the New Forest cicada. To this end, we pursue a crowdsourcing approach, whereby the millions of visitors to the New Forest, where this insect was historically found, will help to monitor its presence by means of a smartphone app that can detect its mating call. Existing research in th...
Insects are an integral part of terrestrial ecosystems, but while they are ubiquitous, they can be d...
Our natural environment is complex and sensitive, and is home to a number of species on the verge of...
In this work, we consider applying machine learning to the analysis and compression of audio signals...
In recent years, the field of computational sustainability has striven to apply artificial intellige...
Citizen science is the involvement of amateur scientists in research for the purpose of data collect...
The New Forest cicada is a declining species native to the UK, and the last unconfirmed sighting was...
Conservation researchers require low-cost access to acoustic monitoring technology. However, afforda...
Mosquitoes are responsible for over one billion cases of disease and over one million deaths each ye...
Acoustic monitoring tools are often constrained to small-scale, short-term studies due to high energ...
1. The cost, usability and power efficiency of available wildlife monitoring equipment currently inh...
1. Monitoring biodiversity over large spatial and temporal scales is crucial for assessing the impac...
Passive acoustic recording has great potential for monitoring both endangered and pest species. Howe...
Traditional methods used to identify and monitor insect species are time-consuming, costly, and full...
Animal habitats are being destructed by humans for their personal needs. Habitat destruction will se...
Traditionally, animal species diversity and abundance is assessed using a variety of methods that ar...
Insects are an integral part of terrestrial ecosystems, but while they are ubiquitous, they can be d...
Our natural environment is complex and sensitive, and is home to a number of species on the verge of...
In this work, we consider applying machine learning to the analysis and compression of audio signals...
In recent years, the field of computational sustainability has striven to apply artificial intellige...
Citizen science is the involvement of amateur scientists in research for the purpose of data collect...
The New Forest cicada is a declining species native to the UK, and the last unconfirmed sighting was...
Conservation researchers require low-cost access to acoustic monitoring technology. However, afforda...
Mosquitoes are responsible for over one billion cases of disease and over one million deaths each ye...
Acoustic monitoring tools are often constrained to small-scale, short-term studies due to high energ...
1. The cost, usability and power efficiency of available wildlife monitoring equipment currently inh...
1. Monitoring biodiversity over large spatial and temporal scales is crucial for assessing the impac...
Passive acoustic recording has great potential for monitoring both endangered and pest species. Howe...
Traditional methods used to identify and monitor insect species are time-consuming, costly, and full...
Animal habitats are being destructed by humans for their personal needs. Habitat destruction will se...
Traditionally, animal species diversity and abundance is assessed using a variety of methods that ar...
Insects are an integral part of terrestrial ecosystems, but while they are ubiquitous, they can be d...
Our natural environment is complex and sensitive, and is home to a number of species on the verge of...
In this work, we consider applying machine learning to the analysis and compression of audio signals...