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COMPARISON AND USAGE OF LOCAL FEATURE BASED ALGORITHMS FOR 3D FACE RECOGNITION

机译:基于局部特征的3D面部识别算法的比较与用法

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With the development of laser scanning technology, 3D point clouds have become easy to obtain. Thus, facial recognition has become a popular field of study by using a three-dimensional point cloud against the constraints of automatic face recognition using two-dimensional images. The aim of the study is to approach 3D face recognition processes from a different dimension. In this context, the facilities of using automatic 3D local keypoint detector algorithms in face recognition are being investigated. In the scope of the thesis, face recognition algorithm was developed using 3D keypoint based methods. As an application data, face data belonging to 10 people were modeled in 3D by using a laser scanner. The algorithm consists of three steps. In the first step, 3D points are defined on the point clouds using Instrinsic Shape Signature (ISS) method. In the second step, key points are defined using Point Feature Histograms (PFH) and Fast Point Feature Histograms (FPFH) histogram methods. In the third step, the keypoints in different point clouds are matched using the feature histograms obtained. As a results, in the natural face expression, ISS-PFH algorithm, 9 out of 10 people; 7 out of 10 people with ISS-FPFH algorithm are correctly defined. When the cases where different face expressions are given to the system are examined, the ISS-PFH algorithm has 5 out of 10 persons; The ISS-FPFH algorithm has 3 out of 10 people correctly identified. The positional accuracy of the matched points has been examined. ICP was applied to the matching point clouds for this purpose. Euclidean distance between corresponding keypoints in the two point cloud is calculated. It has been accepted that the points are shorter than 10 mm. When root mean square errors of correct point matches are examined, there is no significant difference between the methods. In all methods a root mean square error of about 3 mm was determined with an accuracy of 10 mm. The difference between keypoint descriptor algorithms has been determined. The correct matching rate for PFH is up to 60% with 10 mm error, while FPFH histograms are around 25% - 30%.
机译:随着激光扫描技术的发展,3D点云变得易于获得。因此,面部识别通过使用三维点云利用二维图像来利用自动面部识别的约束来成为一种流行的研究领域。该研究的目的是从不同的维度接近3D面部识别过程。在这种情况下,正在研究使用在面部识别中使用自动3D本地KeyPoint检测器算法的设施。在论文的范围内,使用基于3D键盘点的方法开发了人脸识别算法。作为应用程序数据,使用激光扫描仪,属于10个人的面部数据被建模。该算法由三个步骤组成。在第一步中,使用Instrins形状签名(ISS)方法在点云上定义3D点。在第二步中,使用点特征直方图(PFH)和快速点特征直方图(FPFH)直方图方法来定义关键点。在第三步中,使用所获得的特征直方图匹配不同点云中的关键点。作为结果,在天然面部表达中,ISS-PFH算法,10人中有9人;使用ISS-FPFH算法中有10人中的7个中有7个。当检查对系统的不同面部表达式的情况时,ISS-PFH算法中有5人中有5人; ISS-FPFH算法已正确识别出10人中有3个。已经检查了匹配点的位置准确性。为此目的,ICP应用于匹配点云。计算两个点云中相应关键点之间的欧几里德距离。已接受该点短于10毫米。当检查正确点匹配的均方根误差时,该方法之间没有显着差异。在所有方法中,测定大约3mm的根均方误差,精度为10mm。已经确定了关键点描述符算法之间的差异。对于PFH匹配率是正确的高达60 %用10mM误差,而FPFH直方图约25 % - 30 %。

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