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首页> 外文期刊>International Journal of Computer Vision >A machine-learning approach to keypoint detection and landmarking on 3D meshes
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A machine-learning approach to keypoint detection and landmarking on 3D meshes

机译:在3D网格上进行关键点检测和标记的机器学习方法

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摘要

We address the problem of automatically detecting a sparse set of 3D mesh vertices, likely to be good candidates for determining correspondences, even on soft organic objects. We focus on 3D face scans, on which single local shape descriptor responses are known to be weak, sparse or noisy. Our machine-learning approach consists of computing feature vectors containing D different local surface descriptors. These vectors are normalized with respect to the learned distribution of those descriptors for some given target shape (landmark) of interest. Then, an optimal function of this vector is extracted that best separates this particular target shape from its surrounding region within the set of training data. We investigate two alternatives for this optimal function: a linear method, namely Linear Discriminant Analysis, and a non-linear method, namely AdaBoost. We evaluate our approach by landmarking 3D face scans in the FRGC v2 and Bosphorus 3D face datasets. Our system achieves state-of-the-art performance while being highly generic.
机译:我们解决了自动检测稀疏的3D网格顶点集的问题,即使在柔软的有机物体上,它们也可能是确定对应关系的良好候选者。我们专注于3D人脸扫描,已知该3D人脸扫描的单个局部形状描述符响应较弱,稀疏或嘈杂。我们的机器学习方法包括计算包含D个不同局部表面描述符的特征向量。这些向量针对感兴趣的某些给定目标形状(地标)的那些描述符的学习分布进行了归一化。然后,提取此向量的最佳函数,该函数可以最佳地将特定目标形状与其在训练数据集中的周围区域分开。我们研究了此最佳函数的两个替代方法:线性方法(即线性判别分析)和非线性方法(即AdaBoost)。我们通过在FRGC v2和Bosphorus 3D人脸数据集中标记3D人脸扫描来评估我们的方法。我们的系统实现了最先进的性能,同时具有高度通用性。

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