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Semantic Segmentation of Underwater Environments Using DeepLabv3+ and Transfer Learning

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Date
2022
Author
Chicchón Apaza, Miguel Ángel
Bedón Monzón, Héctor Manuel
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Abstract
The semantic segmentation approach is essential in automated scene analysis, but its application in underwater environments is still limited. Datasets generally have insufficient labeled data, unbalanced data classes, and different lighting conditions, making it difficult to obtain optimal results. Currently, deep convolutional neural networks allow very good results in machine vision tasks, and one of the network architectures with good performance in semantic segmentation is DeepLabv3 +. This paper evaluates the performance of DeepLabv3 + and transfer learning based on pre-trained backend networks in ImageNet to study underwater scenes. The experimentation is carried out on a dataset available on the Internet with labels of eight classes. Experimental results show that DeepLabv3 + and transfer learning are effective for semantic segmentation of multiple underwater scene objects with insufficient tagged data and unbalanced classes.
URI
https://hdl.handle.net/20.500.12724/16229
DOI
https://doi.org/10.1007/978-981-16-4016-2_29
How to cite
Chicchon, M. & Bedon, H. (2022). Semantic Segmentation of Underwater Environments Using DeepLabv3+ and Transfer Learning. In: Zhang, YD., Senjyu, T., So-In, C., Joshi, A. (eds.) Smart Trends in Computing and Communications, SmartCom 2021, Proceedings, Lecture Notes in Networks and Systems, (vol. 286, pp. 301-309). Springer. https://doi.org/10.1007/978-981-16-4016-2_29
Publisher
Springer
Category / Subcategory
Pendiente / Pendiente
Subject
Computer vision
Convolutional neural network
Deep learning
DeepLabv3+
Semantic segmentation
Transfer learning
Underwater images
Pendiente
Journal
Lecture Notes in Networks and Systems
Note
Indexado en Scopus
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  • Investigadores externos [58]


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Contacto: repositorio@ulima.edu.pe

Todos los derechos reservados. Diseñado por Chimera Software