Generating face images with attributes for free
With superhuman-level performance of face recognition, we are more concerned about the recognition of fine-grained attributes, such as emotion, age, and gender. However, given that the label space is extremely large and follows a long-tail distribution, it is quite expensive to collect sufficient sa...
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sg-smu-ink.sis_research-66462022-08-10T02:26:17Z Generating face images with attributes for free LIU, Yaoyao SUN, Qianru HE Xiangnan, LIU An-An, SU Yuting, CHUA Tat-Seng, With superhuman-level performance of face recognition, we are more concerned about the recognition of fine-grained attributes, such as emotion, age, and gender. However, given that the label space is extremely large and follows a long-tail distribution, it is quite expensive to collect sufficient samples for fine-grained attributes. This results in imbalanced training samples and inferior attribute recognition models. To this end, we propose the use of arbitrary attribute combinations, without human effort, to synthesize face images. In particular, to bridge the semantic gap between high-level attribute label space and low-level face image, we propose a novel neural-network-based approach that maps the target attribute labels to an embedding vector, which can be fed into a pretrained image decoder to synthesize a new face image. Furthermore, to regularize the attribute for image synthesis, we propose to use a perceptual loss to make the new image explicitly faithful to target attributes. Experimental results show that our approach can generate photorealistic face images from attribute labels, and more importantly, by serving as augmented training samples, these images can significantly boost the performance of attribute recognition model. The code is open-sourced at this link. 2021-06-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/5643 info:doi/10.1109/TNNLS.2020.3007790 https://ink.library.smu.edu.sg/context/sis_research/article/6646/viewcontent/Generating_Face_Images_with_Attributes_for_Free_av.pdf Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Face Face recognition Image recognition Image reconstruction Task analysis Gallium nitride Decoding Graphics and Human Computer Interfaces |
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Face Face recognition Image recognition Image reconstruction Task analysis Gallium nitride Decoding Graphics and Human Computer Interfaces LIU, Yaoyao SUN, Qianru HE Xiangnan, LIU An-An, SU Yuting, CHUA Tat-Seng, Generating face images with attributes for free |
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With superhuman-level performance of face recognition, we are more concerned about the recognition of fine-grained attributes, such as emotion, age, and gender. However, given that the label space is extremely large and follows a long-tail distribution, it is quite expensive to collect sufficient samples for fine-grained attributes. This results in imbalanced training samples and inferior attribute recognition models. To this end, we propose the use of arbitrary attribute combinations, without human effort, to synthesize face images. In particular, to bridge the semantic gap between high-level attribute label space and low-level face image, we propose a novel neural-network-based approach that maps the target attribute labels to an embedding vector, which can be fed into a pretrained image decoder to synthesize a new face image. Furthermore, to regularize the attribute for image synthesis, we propose to use a perceptual loss to make the new image explicitly faithful to target attributes. Experimental results show that our approach can generate photorealistic face images from attribute labels, and more importantly, by serving as augmented training samples, these images can significantly boost the performance of attribute recognition model. The code is open-sourced at this link. |
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LIU, Yaoyao SUN, Qianru HE Xiangnan, LIU An-An, SU Yuting, CHUA Tat-Seng, |
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LIU, Yaoyao SUN, Qianru HE Xiangnan, LIU An-An, SU Yuting, CHUA Tat-Seng, |
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LIU, Yaoyao |
title |
Generating face images with attributes for free |
title_short |
Generating face images with attributes for free |
title_full |
Generating face images with attributes for free |
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Generating face images with attributes for free |
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Generating face images with attributes for free |
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generating face images with attributes for free |
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Institutional Knowledge at Singapore Management University |
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2021 |
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https://ink.library.smu.edu.sg/sis_research/5643 https://ink.library.smu.edu.sg/context/sis_research/article/6646/viewcontent/Generating_Face_Images_with_Attributes_for_Free_av.pdf |
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