多特征识别人脸真伪的有效性评价

Shahela Saif, Samabia Tehseen
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引用次数: 0

摘要

人脸分析是计算机视觉领域的一个重要研究领域,在许多领域都有广泛的应用。人脸识别、情感识别以及最近的深度伪造检测都极大地受益于人脸分析领域的进步。我们的研究试图找出有用的面部特征进行分析。首先分析了几何面部特征在情感识别中的有效性。在随后的实验中,基于初步分析创建了一种融合方案,该方案测试了这些选择的特征在真假图像识别中的性能。我们将局部图像特征与几何面部特征相结合,以衡量它们在假图像检测任务中的有效性。本研究产生的有希望的结果可用于进行更深入的面部几何分析及其在面部分析中的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluating Effectiveness of Using Multi-Features to Differentiate Real from Fake Facial Images
Face analysis is one of the key research areas in the field of computer vision with applications in numerous areas. Face recognition, emotion recognition, and more recently deepfake detection have greatly benefited from the advancements in the field of face analysis. Our research attempts to identify useful facial features for analysis. We first analyze the effectiveness of geometric facial features for the purpose of emotion recognition. In later experiments, a fusion scheme was created based on the preliminary analysis,which tested the performance of these selected features for the identification of real and fake images. We include local image features in combination with geometric facial features to measure their effectiveness in fake image detection tasks. The promising results produced in this study can be used to perform a more in-depth analysis of face geometry and its result in facial analysis.
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