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Using nonlocal filtering and feature extraction approaches in three-dimensional face recognition by Kinect

机译:Kinect在三维人脸识别中使用非局部滤波和特征提取方法

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To use low-cost depth sensors such as Kinect for three-dimensional face recognition with an acceptable rate of recognition, the challenges of filling up nonmeasured pixels and smoothing of noisy data need to be addressed. The main goal of this article is presenting solutions for aforementioned challenges as well as offering feature extraction methods to reach the highest level of accuracy in the presence of different facial expressions and occlusions. To use this method, a domestic database was created. First, the noisy pixels-called holes-of depth image is removed by solving multiple linear equations resulted from the values of the surrounding pixels of the holes. Then, bilateral and block matching 3-D filtering approaches, as representatives of local and nonlocal filtering approaches, are used for depth image smoothing. Curvelet transform as a well-known nonlocal feature extraction technique applied on both RGB and depth images. Two unsupervised dimension reduction techniques, namely, principal component analysis and independent component analysis, are used to reduce the dimension of extracted features. Finally, support vector machine is used for classification. Experimental results show a recognition rate of 90% for just depth images and 100% when combining RGB and depth data of a Kinect sensor which is much higher than other recently proposed algorithms.
机译:为了将低成本的深度传感器(例如Kinect)用于具有可接受的识别率的三维人脸识别,需要解决填充未测量像素和平滑噪声数据的难题。本文的主要目的是提出针对上述挑战的解决方案,并提供特征提取方法,以在存在不同面部表情和遮挡的情况下达到最高的准确性。为了使用这种方法,创建了一个国内数据库。首先,通过求解由孔的周围像素的值产生的多个线性方程,去除称为深度孔的噪点像素。然后,作为局部和非局部滤波方法的代表的双边和块匹配3-D滤波方法被用于深度图像平滑。 Curvelet变换是一种众所周知的非局部特征提取技术,适用于RGB和深度图像。两种无监督的降维技术,即主成分分析和独立成分分析,用于减少提取特征的维数。最后,使用支持向量机进行分类。实验结果表明,仅深度图像的识别率为90%,而结合RGB和Kinect传感器的深度数据时的识别率则为100%,远高于其他最近提出的算法。

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