Mask-Guided Image Person Removal with Data Synthesis

Yunliang Jiang, Chenyang Gu, Zhenfeng Xue, Xiongtao Zhang, Yong Liu
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引用次数: 1

Abstract

As a special case of common object removal, image person removal is playing an increasingly important role in social media and criminal investigation domains. Due to the integrity of person area and the complexity of human posture, person removal has its own dilemmas. In this paper, we propose a novel idea to tackle these problems from the perspective of data synthesis. Concerning the lack of dedicated dataset for image person removal, two dataset production methods are proposed to automatically generate images, masks and ground truths respectively. Then, a learning framework similar to local image degradation is proposed so that the masks can be used to guide the feature extraction process and more texture information can be gathered for final prediction. A coarse-to-fine training strategy is further applied to refine the details. The data synthesis and learning framework combine well with each other. Experimental results verify the effectiveness of our method quantitatively and qualitatively, and the trained network proves to have good generalization ability either on real or synthetic images.
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基于数据合成的面具引导图像人物去除
图像人移除作为普通物品移除的一种特例,在社交媒体和刑侦领域发挥着越来越重要的作用。由于人体区域的完整性和人体姿态的复杂性,人体移除有其自身的困境。本文从数据综合的角度提出了一种解决这些问题的新思路。针对图像人物去除缺乏专用数据集的问题,提出了两种数据集生成方法,分别自动生成图像、掩模和ground truth。然后,提出了一种类似于局部图像退化的学习框架,利用掩模来指导特征提取过程,收集更多的纹理信息进行最终预测。进一步采用从粗到精的训练策略来细化细节。数据综合和学习框架可以很好地结合在一起。实验结果从定量和定性上验证了该方法的有效性,训练后的网络无论对真实图像还是合成图像都具有良好的泛化能力。
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