Spatially adaptive multi-scale contextual attention for image inpainting

被引:0
|
作者
Xueting Wang
Yiyan Chen
Toshihiko Yamasaki
机构
[1] The University of Tokyo,Department of Information Communication and Engineering
[2] AI Laboratory,undefined
[3] CyberAgent,undefined
[4] Inc.,undefined
来源
关键词
Image inpainting; Spatially adaptive; Contextual attention; Multi-scale attention;
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学科分类号
摘要
Image inpainting is the task to fill missing regions of an image. Recently, researchers have achieved a great performance by using convolutional neural networks (CNNs) with the conventional patch-matching method. Existing methods compute the attention scores, which are based on the similarity of patches between the known and missing regions. Considering that patches at different spatial positions can convey different levels of detail, we propose a spatially adaptive multi-scale attention score that uses the patches of different scales to compute scores for each pixel at different positions. Through experiments on the Paris Street View and Places datasets, our proposal shows slight improvement compared with some related methods on the quantitative evaluation metrics commonly used in the existing methods. Moreover, we found that these quantitative metrics are not appropriate enough considering the subjective impressions of the generated images. Therefore, we conducted subjective evaluation through user study for comparison, which shows that our proposal has superiority of performance generating much more detailed and subjectively plausible images.
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页码:31831 / 31846
页数:15
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