Monitoring the morphological traits of farmed fish is pivotal in understanding growth, estimating yield, artificial breeding, and population-based investigations. Currently, morphology measurements mostly happen manually and sometimes in conjunction with individual fish imaging, which is a time-consuming and expensive procedure. In addition, extracting useful information such as fish yield and detecting small variations due to growth or deformities, require extra offline processing of the manually collected images and data. Deep learning (DL) and specifically convolutional neural networks (CNNs) have previously demonstrated great promise in estimating fish features such as weight and length from images. However, their use for extracting fis...
Fish population monitoring systems based on underwater video recording are becoming more popular now...
Underwater video and digital still cameras are rapidly being adopted by marine scientists and manage...
17 pages, 8 tables, 9 figures.-- Under a Creative Commons licenseThe development and effective compl...
Monitoring the morphological traits of farmed fish is pivotal in understanding growth, estimating yi...
Underwater imagery processing is in high demand, but the unrestricted environment makes it difficult...
We have been successfully developing Artificial Intelligence (AI) models for automatically classifyi...
In this paper we perform an empirical evaluation of variants of deep learning methods to automatical...
This study presents an application that employs a machine-learning algorithm to identify fish specie...
The aquaculture industry is one of the faster growing sectors of primary production. In recent years...
In this paper we perform an empirical evaluation of variants of deep learning methods to automatical...
Identifying and counting fish individuals on photos and videos is a crucial task to cost-effectively...
A wide range of applications in marine ecology extensively uses underwater cameras. Still, to effici...
[eng] In the last decade, deep learning has revolutionized almost every scientific discipline and e...
Abstract: Computer vision has been applied to fish recognition for at least three decades. With the ...
In the smart mariculture, batch testing of breeding traits is a key issue in the breeding of improve...
Fish population monitoring systems based on underwater video recording are becoming more popular now...
Underwater video and digital still cameras are rapidly being adopted by marine scientists and manage...
17 pages, 8 tables, 9 figures.-- Under a Creative Commons licenseThe development and effective compl...
Monitoring the morphological traits of farmed fish is pivotal in understanding growth, estimating yi...
Underwater imagery processing is in high demand, but the unrestricted environment makes it difficult...
We have been successfully developing Artificial Intelligence (AI) models for automatically classifyi...
In this paper we perform an empirical evaluation of variants of deep learning methods to automatical...
This study presents an application that employs a machine-learning algorithm to identify fish specie...
The aquaculture industry is one of the faster growing sectors of primary production. In recent years...
In this paper we perform an empirical evaluation of variants of deep learning methods to automatical...
Identifying and counting fish individuals on photos and videos is a crucial task to cost-effectively...
A wide range of applications in marine ecology extensively uses underwater cameras. Still, to effici...
[eng] In the last decade, deep learning has revolutionized almost every scientific discipline and e...
Abstract: Computer vision has been applied to fish recognition for at least three decades. With the ...
In the smart mariculture, batch testing of breeding traits is a key issue in the breeding of improve...
Fish population monitoring systems based on underwater video recording are becoming more popular now...
Underwater video and digital still cameras are rapidly being adopted by marine scientists and manage...
17 pages, 8 tables, 9 figures.-- Under a Creative Commons licenseThe development and effective compl...