Synthesis of Facial Images Based on Relevance Feedback

Caie Xu, Shota Fushimi, M. Toyoura, Jiayi Xu, Honglin Li, Xiaoyang Mao
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Abstract

We propose a dialogic system based on a relevance feedback strategy that allows for the semiautomatic synthesis of a facial image that only exists in a user's mind. The user is presented with several facial images and judges whether each one resembles the face that he or she is imagining. Based on the feedback from the user, a set of sample facial images are used to train an Optimum-Path Forest classifying the relevance of facial images. An interpolation method is then employed to synthesize new facial images that closely resemble the imagined face. A series of experiments are conducted to evaluate and verify the effectiveness and efficiency of the proposed technique.
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基于相关反馈的人脸图像合成
我们提出了一个基于相关反馈策略的对话系统,该系统允许半自动合成只存在于用户脑海中的面部图像。用户会看到几张面部图像,并判断每一张是否与他或她想象中的脸相似。在用户反馈的基础上,使用一组人脸图像样本来训练一个最优路径森林,对人脸图像的相关性进行分类。然后采用插值方法合成与想象中的人脸非常相似的新人脸图像。进行了一系列的实验来评估和验证该技术的有效性和效率。
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