Abstract:
Aquaculture has grown over the past decade now producing 88 million tons annually
which is 49 % of the global fish production. By addressing production challenges and
introducing automated methods, production can increase even further. Among such
challenges are infectious diseases which have a profound impact. To alleviate this neg ative impact, prevention and early detection of diseases are of utmost importance. The
latter includes both the tracking of health, for example in the form of growth monitor ing, as well as the recognition of early signs of disease such as behavioral or physiological
symptoms. With the development of modern technology such as data science and AI
the growing aquaculture industry is switching from manual monitoring and controlling
to machine-driven solutions. AI has automated information extraction from images and
accurate data interpretation have facilitated better decision making and higher prof itability in fish farms.The goal of this thesis work is to utilize machine learning and
computer vision for the early detection and prevention of fish diseases in aquaculture.
My research work comprises of three main modules. The first module focuses on fish
biomass estimation, utilizing deep learning algorithms to segment fish, classify them
into five species, and estimate their biomass. The second module aims at detecting
disease symptoms, employing a deep learning algorithm to classify fish into healthy and
unhealthy categories, and subsequently identifying symptoms and locations of bacterial
infections if a fish is classified as unhealthy.We expanded the capabilities of this module
for real-time detection of flavobacterium in trout through the analysis of underwater
footage. Third module focuses on analyzing fish behavior in real time, Unlike the previ ous scenario where symptoms were physically visible, such as changes in color, bleeding
or visible injuries, behavioral symptoms are not as prominent. Fish are sensitive to en vironmental changes and they exhibit a series of responses to changes in environmental
factors. For example when fish are stressed, they undergo various metabolic changes all of which are expressed externally by variations in their behavior. Hence any kind
of change in feeding behavior, swimming or skin color is a sign of unfavorable condi tions, stress. Analyzing unusual behavior can provide an early warning of its health
status. In this project 5 parameters (fish density, speed, direction, angle and depth)
are calculated that given insights into fish health. Additionally, to overcome the typical
scarcity of available data in this field, with the help of our industry partners we col lected and prepared datasets from the scratch. And using these algorithms industrial
software solutions can be developed for an improved fish health monitoring in fish farms.
These advances will facilitate the production of environmentally and economically more
sustainable fish, while promoting animal welfare.