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Title Semantic Segmentation of Fish and Underwater Environments Using Deep Convolutional Neural Networks and Learned Active Contours
Authors Miguel Chicchón, Hector Bedon, Carlos R. Del-Blanco, Iván Sipirán
Publication date 2023
Abstract The conservation of marine resources requires constant
monitoring
of the underwater environment by researchers. For this purpose, visual
automated monitoring systems are of great interest, especially those that
can describe the environment using semantic segmentation based on deep
learning. Although they have been successfully used in several applications,
such as biomedical ones, obtaining optimal results in underwater
environments is still a challenge due to the heterogeneity of water and
lighting conditions, and the scarcity of labeled datasets. Even more, the
existing deep learning techniques oriented to semantic segmentation only
provide low resolution results, lacking the enough spatial details for a
high performance monitoring. To address these challenges, a combined loss
function based on the active contour theory and level set methods is
proposed to refine the spatial segmentation resolution and quality. To
evaluate the method, a new underwater dataset with pixel annotations for
three classes (fish, seafloor, and water) was created using images from
publicly accessible datasets like SUIM, RockFish, and DeepFish. The
performance of architectures of convolutional neural networks (CNNs), such
as UNet and DeepLabV3+, trained with different loss functions (cross
entropy, dice, and active contours) was compared, finding that the proposed
combined loss function improved the segmentation results by around 3%, both
in the metric Intercept Over Union (IoU) as in Hausdorff Distance
(HD).
Pages 33652-33665
Volume 11
Journal name IEEE Access
Publisher IEEE Computer Society Press (Los Alamitos, CA, USA)
Reference URL View reference page