多模态特征融合用于视频伪造检测

G. Chetty, Matthew Lipton
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引用次数: 4

摘要

在本文中,我们提出了一种新的局部特征分析和特征级融合技术,用于检测基于面部生物识别的在线访问控制场景中的篡改或伪造。通过对人脸图像数据在色度色彩空间和色相饱和度色彩空间进行分析,提取局部特征。将由色调和饱和度梯度组成的局部特征与主成分分析获得的全局特征进行特征级融合,表明在低带宽在线流媒体视频访问控制环境下,从真实图像中检测篡改或伪造图像的性能可以得到显著提高。对多模态人脸视频语料库融合技术的性能评估表明,局部特征和全局特征的特征级融合可以实现相同的错误率,误差小于1%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multimodal feature fusion for video forgery detection
In this paper we propose a novel local feature analysis and feature level fusion technique for detecting tampering or forgery for facial-biometric based on-line access control scenarios. The local features are extracted by analysing facial image data in the chrominance colour space and hue-saturation colour space. A feature level fusion of local features consisting of hue and saturation gradients with global features obtained from principal component analysis showed that a significant improvement in performance can be achieved in detecting tampered or forged images from genuine images in low bandwidth online streaming video access control contexts. The performance evaluation of the proposed fusion technique for a multimodal facial video corpus showed that an equal error rate of less than 1% could be achieved with feature level fusion of local features and global features.
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