基于aam的系统在人脸识别中的应用

M. A. Khan, C. Xydeas, Hassan Ahmed
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引用次数: 5

摘要

由于光照、姿势和表情的差异,人脸肖像类型图像中存在显著水平的信号可变性,这通常被认为对i)人脸建模和合成(FM/S)以及ii)人脸识别(FR)系统的整体性能产生不利影响。此外,对这种输入数据可变性的依赖以及相对于人脸合成性能的敏感性,主动外观建模(AAM)也得到了很好的理解。因此,多模型主动外观模型(MM-AAM)技术[1]得到了发展,并被证明具有比AAM更好的人脸合成性能。本文考虑了AAM和MM-AAM两种人脸建模和合成方法在人脸识别应用中的适用性。因此,一种MM-AAM方法已经被设计出来,可以在人脸识别的背景下成功地运作。实验结果表明,FR-MM-AAM明显优于常规FR-AAM。
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On the application of AAM-based systems in face recognition
The presence of significant levels of signal variability in face-portrait type of images, due to differences in illumination, pose and expression, is generally been accepted as having an adverse effect on the overall performance of i) face modeling and synthesis (FM/S) and also on ii) face recognition (FR) systems. Furthermore, the dependency on such input data variability and thus the sensitivity, with respect to face synthesis performance, of Active Appearance Modeling (AAM), is also well understood. As a result, the Multi-Model Active Appearance Model (MM-AAM) technique [1] has been developed and shown to possess a superior face synthesis performance than AAM. This paper considers the applicability in FR applications of both AAM and MM-AAM face modeling and synthesis approaches. Thus, a MM-AAM methodology has been devised that is tailored to operate successfully within the context of face recognition. Experimental results show FR-MM-AAM to be significantly superior to conventional FR-AAM.
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