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Aesthetic Visual Style Assessment on Dunhuang Murals 被引量:1

Aesthetic Visual Style Assessment on Dunhuang Murals
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摘要 Dunhuang murals are gems of Chinese traditional art. This paper demonstrates a simple, yet powerful method to automatically identify the aesthetic visual style that lies in Dunhuang murals. Based on the art knowledge on Dunhuang murals, the method explicitly predicts some of possible image attributes that a human might use to understand the aesthetic visual style of a mural. These cues fall into three broad types: ① composition attributes related to mural layout or configuration; ② color attributes related to color types depicted; ③ brightness attributes related to bright conditions. We show that a classifier trained on these attributes can provide an efficient way to predict the aesthetic visual style of Dunhuang murals. Dunhuang murals are gems of Chinese traditional art. This paper demonstrates a simple, yet powerful method to automatically identify the aesthetic visual style that lies in Dunhuang murals. Based on the art knowledge on Dunhuang murals, the method explicitly predicts some of possible image attributes that a human might use to understand the aesthetic visual style of a mural. These cues fall into three broad types: ~) composition attributes related to mural layout or configuration; ~ color attributes related to color types depicted; ~ brightness attributes related to bright conditions. We show that a classifier trained on these attributes can provide an efficient way to predict the aesthetic visual style of Dunhuang murals.
出处 《Journal of Shanghai Jiaotong university(Science)》 EI 2014年第1期28-34,共7页 上海交通大学学报(英文版)
基金 the National Basic Research Program(973)of China(No.2012CB725305) the National Key Technology R&D Program of China(No.2012BAH03F02)
关键词 Dunhuang murals aesthetic visual style feature descriptors 敦煌壁画 视觉风格 颜色属性 评估 美学 传统艺术 自动识别 审美
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