图像语义分割的方法和结构分析

Haozheng Ji
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引用次数: 0

摘要

近年来,由于对图像内容的理解和识别需求的不断增加,图像语义分割技术得到了迅速发展。图像语义分割技术也出现了越来越多的改革和创新,每种经典模型都有自己的创新和特点,这有助于图像语义分割的发展。本文综述了四种常用的语义分割模型,并介绍了它们的特点。结果表明,与其他模型相比,基于Transformer的SETR模型在语义分割结果上具有更高的性能水平。
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Analysis on Approaches and Structures of Image Semantic Segmentation
In recent years, due to the increasing demand for the understanding and recognition of content in images, image semantic segmentation technology has developed rapidly. Image semantic segmentation technology has also seen more and more reforms and innovations Each classical model has its own innovation and characteristics, which contributes to the development of image semantic segmentation.In this paper, four popular semantic segmentation models are reviewed and their characteristics are introduced.The results show that compared with other models, the SETR model based on Transformer has a higher performance level in semantic segmentation results.
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