Dunhuang murals contour generation network based on convolution and self-attention fusion
Baokai Liu, Fengjie He, Shiqiang Du, Kaiwu Zhang, Jianhua Wang

TL;DR
This paper introduces a novel deep learning network combining convolution and self-attention to improve the accuracy and detail of contour detection in Dunhuang murals, enhancing cultural heritage analysis.
Contribution
It proposes a new residual self-attention convolution module and a densely connected backbone for better edge detection in murals, outperforming existing methods.
Findings
Produces sharper, richer edge maps
Achieves competitive performance on public datasets
Effectively fuses local and global features
Abstract
Dunhuang murals are a collection of Chinese style and national style, forming a self-contained Chinese-style Buddhist art. It has very high historical and cultural value and research significance. Among them, the lines of Dunhuang murals are highly general and expressive. It reflects the character's distinctive character and complex inner emotions. Therefore, the outline drawing of murals is of great significance to the research of Dunhuang Culture. The contour generation of Dunhuang murals belongs to image edge detection, which is an important branch of computer vision, aims to extract salient contour information in images. Although convolution-based deep learning networks have achieved good results in image edge extraction by exploring the contextual and semantic features of images. However, with the enlargement of the receptive field, some local detail information is lost. This makes…
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Taxonomy
TopicsColor Science and Applications · Advanced Image Fusion Techniques · melanin and skin pigmentation
MethodsConvolution
