语义先验引导面部彩绘

Zeyang Zhang, Xiaobo Zhou, Shengjie Zhao, Xiaoyan Zhang
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引用次数: 6

摘要

面部补图是图像补图的一个子任务,旨在修复破损或遮挡的不完整肖像。由于人脸图像细节的高度复杂性,在人脸上进行彩绘是比较困难的。目前,与人脸相关的任务往往借鉴了人脸识别和人脸检测的优秀方法,使用多任务处理来提高其效果。因此,本文提出将人脸先验知识加入到已有的高级喷漆模型中,并结合感知损失和SSIM损失来提高模型修复效率。实现了一种新的人脸修复工艺和算法,提高了修复效果。
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Semantic Prior Guided Face Inpainting
Face inpainting is a sub-task of image inpainting designed to repair broken or occluded incomplete portraits. Due to the high complexity of face image details, inpainting on the face is more difficult. At present, face-related tasks often draw on excellent methods from face recognition and face detection, using multitasking to boost its effect. Therefore, this paper proposes to add the face prior knowledge to the existing advanced inpainting model, combined with perceptual loss and SSIM loss to improve the model repair efficiency. A new face inpainting process and algorithm is implemented, and the repair effect is improved.
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Session details: Vision in Multimedia Domain Specific and Idiom Adaptive Video Summarization Multi-Label Image Classification with Attention Mechanism and Graph Convolutional Networks Session details: Brave New Idea Self-balance Motion and Appearance Model for Multi-object Tracking in UAV
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