Petrellis, N.; Keramidas, G.; Antonopoulos, C.P.; Voros, N. Fish Monitoring from Low-Contrast Underwater Images. Electronics2023, 12, 3338.
Petrellis, N.; Keramidas, G.; Antonopoulos, C.P.; Voros, N. Fish Monitoring from Low-Contrast Underwater Images. Electronics 2023, 12, 3338.
Petrellis, N.; Keramidas, G.; Antonopoulos, C.P.; Voros, N. Fish Monitoring from Low-Contrast Underwater Images. Electronics2023, 12, 3338.
Petrellis, N.; Keramidas, G.; Antonopoulos, C.P.; Voros, N. Fish Monitoring from Low-Contrast Underwater Images. Electronics 2023, 12, 3338.
Abstract
A morphological feature estimation method is presented, that can be used to monitor fish from low contrast underwater images and videos. The fish orientation is classified in order to apply a shape alignment technique that is based on the Ensemble of Regression Trees machine learning method. Shape alignment allows the estimation of fish dimensions (length, height, mass) and the location of fish body parts of particular interest such as the eyes and gills. The developed system can be exploited both for fish monitoring in open sea as well as aquacultures where non-invasive, low cost morphological feature extraction is essential. Fish health can be assessed from malformations in body shape, the color of the eyes or the gills as well as the fish behavior. The proposed method can estimate the position of 18 landmarks with an accuracy of about 95% from low resolution and low contrast underwater images where the fish can be hardly distinguished from its background. Hardware acceleration can be applied at various stages of the proposed method for real time video processing. As a case study, the developed system has been trained and tested with several Mediterranean fish species in the category of seabream or similar: diplodous sargus annularis (white seabream), diplodus annularis seabream (spawn), oblada melanura (saddled seabream), pagrus pagrus (common seabream), etc. A large dataset with low resolution underwater videos and images has been created in the context of this work.
Keywords
fish monitoring; shape alignment; machine learning; ensemble of regression trees; shape orientation; morphological feature extraction; hardware acceleration
Subject
Computer Science and Mathematics, Artificial Intelligence and Machine Learning
Copyright:
This is an open access article distributed under the Creative Commons Attribution License which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.