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  • 學位論文

A Learning-Based System for Generating Exaggerative Caricature from Face Images with Expression

以統計學習的方式從有表情的臉部圖片產生誇大漫畫圖的系統

指導教授 : 賴尚宏

摘要


在這篇論文中,我們提出了一個以統計學習的方式,產生有表情的誇大漫畫的系統。此系統能從畫家的作品中學習此人的作畫風格,並能從無表情╱生氣╱開心的人臉照片自動產生有誇大效果的無表情╱生氣╱開心的漫畫圖片。現有的產生誇大漫畫的方法大多只能處理正面、脫帽、沒戴眼鏡、面無表情的臉部照片,並且無法同時處理兩種以上畫家可能使用的誇張效果。我們所提出的漫畫產生系統不但可以誇大臉部圖片的特徵及表情,也可以同時學習畫家多樣的誇張手法。我們的系統流程可以分為下列三個部分:臉部特徵的誇大、圖片紋理轉換、以及紋理映射。系統以LPH(Locality Preserving Hallucination)統計學習演算法來分析照片與畫家所畫的漫畫之間的關係,從而學習畫家是如何誇張人臉的特徵。接著使用Sobel邊緣檢測器、和已知的臉部特徵點等資訊,進而產生想要的漫畫紋理。將得到的漫畫紋理以及剛產生的誇大特徵點以RBF(Radial Basis Function)變形方法加以處理後,便可以得到有著我們想要的誇張效果的漫畫圖片。從實驗結果中可以看出,我們的系統可以找出某些畫家會特別著墨的臉部特徵,並對這些特徵以類似的手法加以誇大。

關鍵字

漫畫 誇大 表情 臉部 統計學習 HASH(0x1d0f8270)

並列摘要


In this thesis, we proposed a learning-based system for generating exaggerative caricatures with expression. This system is capable of learning the drawing style of artists from their caricature works as the training data, and automatically creates exaggerative neutral/angry/happy caricatures from neutral/angry/happy images. Most previous works can only deal with frontal-view faces with neutral expression without glasses or hats, and cannot apply more than one drawing prototype learned from the caricatures drawn by a cartoonist at a time. The proposed caricature generation system exaggerates facial images with expression and learns the drawing prototypes from training data as well. The generation process is decomposed into three parts: facial feature exaggeration, texture transformation, and texture mapping. To learn how the cartoonist exaggerates the facial features of distinct facial expressions, the system analyzes the correlation between the photo caricature pairs using LPH (Locality Preserving Hallucination). Then apply Sobel edge detector as well as information of feature points to synthesize the desired texture. After combining exaggerated feature shapes with sketches by RBF (Radial Basis Function) warping, we can obtain caricatures with desired exaggeration. Experimental results show that our system can capture some features selected by the artist and exaggerate them in similar ways.

並列關鍵字

caricature exaggerative expression facial learning LPH

參考文獻


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[7] H. Chen, Y. Xu, H. Shum, S. Zhu, N. Zheng, "Example-based Caricature Generation with Exaggeration," Proceedings of the 10th Pacific Conference on Computer Graphics and Applications, pages 386-393, 2002

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