2024
DOI: 10.1371/journal.pone.0300767
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Semantic segmentation of urban environments: Leveraging U-Net deep learning model for cityscape image analysis

T. S. Arulananth,
P. G. Kuppusamy,
Ramesh Kumar Ayyasamy
et al.

Abstract: Semantic segmentation of cityscapes via deep learning is an essential and game-changing research topic that offers a more nuanced comprehension of urban landscapes. Deep learning techniques tackle urban complexity and diversity, which unlocks a broad range of applications. These include urban planning, transportation management, autonomous driving, and smart city efforts. Through rich context and insights, semantic segmentation helps decision-makers and stakeholders make educated decisions for sustainable and … Show more

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Cited by 2 publications
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