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Noise modelling for denoising and three-dimensional face recognition algorithms performance evaluation

机译:用于降噪的噪声建模和三维人脸识别算法性能评估

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摘要

This study proposes an algorithm is proposed to quantitatively evaluate the performance of three-dimensional (3D) holistic face recognition algorithms when various denoising methods are used. First, a method is proposed to model the noise on the 3D face datasets. The model not only identifies those regions on the face which are sensitive to the noise but can also be used to simulate noise for any given 3D face. Then, by incorporating the noise model in a novel 3D face recognition pipeline, seven different classification and matching methods and six denoising techniques are used to quantify the face recognition algorithms performance for different powers of the noise. The outcome: (i) shows the most reliable parameters for the denoising methods to be used in a 3D face recognition pipeline; (ii) shows which parts of the face are more vulnerable to noise and require further post-processing after data acquisition; and (iii) compares the performance of three different categories of recognition algorithms: training-free matching-based, subspace projection-based and training-based (without projection) classifiers. The results show the high performance of the bootstrap aggregating tree classifiers and median filtering for very high intensity noise. Moreover, when different noisy/denoised samples are used as probes or in the gallery, the matching algorithms significantly outperform the training-based (including the subspace projection) methods.
机译:这项研究提出了一种算法,用于定量评估使用各种降噪方法的三维(3D)整体人脸识别算法的性能。首先,提出了一种在3D人脸数据集上对噪声建模的方法。该模型不仅可以识别脸部对噪声敏感的区域,还可以用于模拟任何给定3D脸部的噪声。然后,通过将噪声模型合并到新颖的3D人脸识别流水线中,可以使用七种不同的分类和匹配方法以及六种降噪技术来量化针对不同噪声功率的人脸识别算法的性能。结果:(i)显示了用于3D人脸识别管道的降噪方法的最可靠参数; (ii)显示面部的哪些部位更容易受到噪声干扰,并在数据采集后需要进一步的后处理; (iii)比较三种不同类别的识别算法的性能:基于无训练匹配的,基于子空间投影的和基于训练(无投影)的分类器。结果表明,自举聚合树分类器和中值滤波具有很高的强度噪声,因此具有很高的性能。此外,当使用不同的噪点/去噪样本作为探针或在画廊中时,匹配算法的性能明显优于基于训练的方法(包括子空间投影)。

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