Startseite Technik Deep learning for image segmentation
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Deep learning for image segmentation

  • C. Thangamani , S. Revathi , M. Anand , Anantha Murthy und S. Praveena
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Abstract

Image segmentation, an essential part of computer vision, has perhaps undergone some of the most revolutionary changes through the application of deep learning structures. This work aims at presenting a systematic survey about deep learning methods for image segmentation, with a major attention on state-of-the-art architectures and some of the problems associated with them. Starting with the first heuristic convolutional neural network and the initial U-Net modelU-Net model, the discussion covers features of DeepLab family and the recent attempt to incorporate transformers into segmentation tasks. Problem areas, including computationally expensive methods, loss of small features, and transfer between various datasets, are considered. Future prospects are provided and suggestions for enhancing the efficiency of the mechanism, scalability, and flexibility in the future are also added. The purpose of this chapter was to provide the readers with a comprehensive knowledge and analysis on the state and direction of the current development and potential research topics of image segmentation.

Abstract

Image segmentation, an essential part of computer vision, has perhaps undergone some of the most revolutionary changes through the application of deep learning structures. This work aims at presenting a systematic survey about deep learning methods for image segmentation, with a major attention on state-of-the-art architectures and some of the problems associated with them. Starting with the first heuristic convolutional neural network and the initial U-Net modelU-Net model, the discussion covers features of DeepLab family and the recent attempt to incorporate transformers into segmentation tasks. Problem areas, including computationally expensive methods, loss of small features, and transfer between various datasets, are considered. Future prospects are provided and suggestions for enhancing the efficiency of the mechanism, scalability, and flexibility in the future are also added. The purpose of this chapter was to provide the readers with a comprehensive knowledge and analysis on the state and direction of the current development and potential research topics of image segmentation.

Heruntergeladen am 1.10.2025 von https://www.degruyterbrill.com/document/doi/10.1515/9783112205198-003/html
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