Applying deep learning and the ecological home range concept to document the spatial distribution of Atlantic salmon parr (Salmo salar L.) in experimental tanks
Metadatos
Mostrar el registro completo del ítemFecha de publicación:
2025
Resumen:
Measuring and monitoring fish welfare in aquaculture research relies on the use of outcome- (biotic)
and input-based (e.g., abiotic) welfare indicators (WIs). Incorporating behavioural auditing into this
toolbox can sometimes be challenging because sourcing quantitative data is often labour intensive
and it can be a time-consuming process. Digitalization of this process via the use of computer vision
and artificial intelligence can help automate and streamline the procedure, help gather continuous
quantitative data and help process optimisation and assist in decision-making. The tool introduced
in this study (1) adapts the DeepLabCut framework, based on computer vision and machine learning,
to obtain pose estimation of Atlantic salmon parr under replicated experimental conditions, (2)
quantifies the spatial distribution of the fish through a toolbox of metrics inspired by the ecological
concepts home range and core area, and (3) applies it to inspect behavioural variability in and around
feeding. This proof of concept study demonstrates the potential of our methodology for automating
the analysis of fish behaviour in relation to home range and core area, including fish detection, spatial
distribution and the variations within and between tanks. The impact of feeding on these patterns is
also briefly outlined, using 5 days of experimental data as a demonstrative case study. This approach
can provide stakeholders with valuable information on how the fish use their rearing environment in
small-scale experimental settings and can be used for the further development of technologies for
measuring and monitoring the behaviour of fish in research settings in future studies.
Colecciones: