基于生成对抗网络的犯罪素描研究

Hanzhou Wu, Yuwei Yao, Xinpeng Zhang, Jiangfeng Wang
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引用次数: 0

摘要

犯罪素描的目的是通过观察者能够记住的犯罪嫌疑人的细节,画出犯罪嫌疑人的近似肖像。然而,即使对于一个专业的艺术家来说,完成素描和画出一幅好的肖像也需要很多时间。因此,它促使我们使用基于生成对抗网络的架构来研究法医素描,这使我们能够合成目击者描述的犯罪嫌疑人的真实肖像。所提出的工作包括两个步骤:素描生成和肖像生成。对于前者,面部轮廓是基于描述性细节勾画出来的。对于后者,完成面部细节以生成肖像。为了使人像更加逼真,我们使用了人像识别器,它不仅可以学习生成器合成的人脸与真实人脸之间的判别特征,还可以识别人脸属性。实验表明,该方法在罪犯素描方面取得了良好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Criminal Sketching with Generative Adversarial Network
Criminal sketching aims to draw an approximation portrait of the criminal suspect by details of the criminal suspect that the observer can remember. However, even for a professional artist, it would need much time to complete sketching and draw a good portrait. It therefore motivates us to study forensic sketching with a generative adversarial network based architecture, which allows us to synthesize a real-like portrait of the criminal suspect described by an eyewitness. The proposed work contains two steps: sketch generation and portrait generation. For the former, a facial outline is sketched based on the descriptive details. For the latter, the facial details are completed to generate a portrait. To make the portrait more realistic, we use a portrait discriminator, which can not only learn the discriminative features between the faces synthesized by the generator and the real faces, but also recognize the face attributes. Experiments have shown that this work achieves promising performance for criminal sketching.
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