Machine learning is rapidly developing as a tool for gathering data from imagery and may be useful in identifying (classifying) visible specimens in large numbers of seabed photographs. Application of an automated classification workflow requires manually identified specimens to be supplied for training and validating the model. These training and validation datasets are generally generated by partitioning the available manual identified specimens; typical ratios of training to validation dataset sizes are 75:25 or 80:20. However, this approach does not facilitate the desired scalability, which would require models to successfully classify specimens in hundreds of thousands to millions of images after training on a relatively small subset o...
Video and image data are regularly used in the field of benthic ecology to document biodiversity. Ho...
Despite current efforts to study deep-sea life, there is a dependency on technological advancements ...
Visual sampling techniques represent a valuable resource for a rapid, non-invasive data acquisition ...
Machine learning is rapidly developing as a tool for gathering data from imagery and may be useful i...
Multiple investigators often generate data from seabed images within a single image set to reduce th...
Langenkämper D, Simon-Lledó E, Hosking B, Jones DOB, Nattkemper TW. On the impact of Citizen Science...
Schoening T. Automated detection in benthic images for megafauna classification and marine resource ...
Processing data from surveys using photos or videos remains a major bottleneck in ecology. Deep Lear...
Imagery has become a key tool for assessing deep-sea megafaunal biodiversity, historically based on ...
Aquatic biomonitoring is an integral part of assessing the state and quality of freshwater systems. ...
25 pagesInternational audienceImagery has become a key tool for assessing deep-sea megafaunal biodiv...
Video and image data are regularly used in the field of benthic ecology to document biodiversity. Ho...
Despite current efforts to study deep-sea life, there is a dependency on technological advancements ...
Visual sampling techniques represent a valuable resource for a rapid, non-invasive data acquisition ...
Machine learning is rapidly developing as a tool for gathering data from imagery and may be useful i...
Multiple investigators often generate data from seabed images within a single image set to reduce th...
Langenkämper D, Simon-Lledó E, Hosking B, Jones DOB, Nattkemper TW. On the impact of Citizen Science...
Schoening T. Automated detection in benthic images for megafauna classification and marine resource ...
Processing data from surveys using photos or videos remains a major bottleneck in ecology. Deep Lear...
Imagery has become a key tool for assessing deep-sea megafaunal biodiversity, historically based on ...
Aquatic biomonitoring is an integral part of assessing the state and quality of freshwater systems. ...
25 pagesInternational audienceImagery has become a key tool for assessing deep-sea megafaunal biodiv...
Video and image data are regularly used in the field of benthic ecology to document biodiversity. Ho...
Despite current efforts to study deep-sea life, there is a dependency on technological advancements ...
Visual sampling techniques represent a valuable resource for a rapid, non-invasive data acquisition ...