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International Journal of Mathematical, Engineering and Management Sciences

eISSN: 2455-7749 . Open Access


Multiclass Image Segmentation using Deep Residual Encoder-Decoder Models in Highly Turbid Underwater Ambiances

Multiclass Image Segmentation using Deep Residual Encoder-Decoder Models in Highly Turbid Underwater Ambiances

T. P. Mithun Haridas
Center for Ocean Electronics Lab (CUCENTOL), Department of Electronics, Cochin University of Science and Technology, 682021, Kochi, Kerala, India.

Suraj Kamal
Center for Ocean Electronics Lab (CUCENTOL), Department of Electronics, Cochin University of Science and Technology, 682021, Kochi, Kerala, India.

Arun A. Balakrishnan
Center for Ocean Electronics Lab (CUCENTOL), Department of Electronics, Cochin University of Science and Technology, 682021, Kochi, Kerala, India.

Rosemol Thomas
Center for Ocean Electronics Lab (CUCENTOL), Department of Electronics, Cochin University of Science and Technology, 682021, Kochi, Kerala, India.

N. A. Nezla
Center for Ocean Electronics Lab (CUCENTOL), Department of Electronics, Cochin University of Science and Technology, 682021, Kochi, Kerala, India.

Kannan Balakrishnan
Department of Computer Applications, Cochin University of Science and Technology, 682021, Kochi, Kerala, India.

M. H. Supriya
Center for Ocean Electronics Lab (CUCENTOL), Department of Electronics, Cochin University of Science and Technology, 682021, Kochi, Kerala, India.

DOI https://doi.org/10.33889/IJMEMS.2024.9.6.080

Received on April 01, 2024
  ;
Accepted on September 03, 2024

Abstract

Underwater environments, especially the coral reefs, are the habitat of many critically endangered species. Extensive monitoring of these aquatic ecosystems is essential for conserving and deep understanding of these vulnerable habitats. Monitoring by extracting details from underwater images of turbid, hazy marine environments is extremely challenging. In this work, a novel annotated dataset is created for three classes of objects in the images of coral reef environment considering fish, rock/coral and background for the Fish4Knowledge dataset, a benchmark dataset primarily for binary segmentation. This work also proposes a multiclass ResUnet based image segmentation model for the newly created multiclass annotations. Various encoder-decoder convolutional architectures were analysed and found that ResUnet exhibits better robustness. The performance of the multiclass ResUnet model is also analysed by optimizing with different cost functions. Various underwater noisy conditions are simulated in the test images to find the robustness of the model, and observed that the proposed model optimised with Jaccard loss performs better even in extremely noisy scenarios.

Keywords- Underwater image, Encoder-decoder model, Multi-class image segmentation, Fish4Knowledge, Underwater noise.

Citation

Haridas, T. P. M. Kamal, S., Balakrishnan, A. A. Thomas, R., Nezla, N. A., Balakrishnan, K., & Supriya, M. H. (2024). Multiclass Image Segmentation using Deep Residual Encoder-Decoder Models in Highly Turbid Underwater Ambiances. International Journal of Mathematical, Engineering and Management Sciences, 9(6), 1510-1530. https://doi.org/10.33889/IJMEMS.2024.9.6.080.