2024
DOI: 10.21203/rs.3.rs-4512461/v1
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Comparison of Network Architectures for Semantic Segmentation

Teodor Boyadzhiev

Abstract: Semantic segmentation is an important task in computer vision applications like autonomous driving, remote sensing, and medical image processing. Recently deep convolutional neural networks have become a standard in semantic segmentation tasks. The encoder-decoder architecture, an example of which is the UNet, has become well established and widely used. However, a two stream architecture working at different resolutions, an example of which is the DDRNet, has shown promising results. This paper aims to compar… Show more

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