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引用次数: 9

摘要

提出了一种人脸图像中口部边界的自动提取算法。该算法基于可变形模型的分层模型自适应方案。关于对象形状的知识用于定义其初始可变形模板。每个口边界曲线最初是基于三个控制点形成的,这些控制点的位置是通过使用合适的成本函数优化过程找到的。成本函数捕获了关于感知组织形状的基本知识。两个控制点是嘴角,在定位头部边界的基础上找到近似的嘴巴窗口后,将嘴角作为嘴巴的初始位置。在算法的第二阶段对模型进行分层改进。每个边界曲线都使用更多的控制点进行微调。只有当二次成本进一步降低时,旧模型才会自适应地被新模型所取代。结果表明,模型自适应技术能较好地自动增强口腔边界模型。
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A hierarchical and adaptive deformable model for mouth boundary detection
An automatic algorithm to extract mouth boundaries in human face images is proposed. The algorithm is based on a hierarchical model adaptation scheme using deformable models. The knowledge about the shape of the object is used to define its initial deformable template. Each mouth boundary curve is initially formed based on three control points whose locations are found through an optimization process using a suitable cost functional. The cost functional captures the essential knowledge about the shape for perceptual organization. Two control points are the mouth corners, which are used as the initial location of the mouth after an approximate mouth window is found based on locating the head boundary. The model is hierarchically improved in the second stage of the algorithm. Each boundary curve is finely tuned using more control points. An old model is adaptively replaced by a new model only if a secondary cost is further reduced. The results show that the model adaptation technique satisfactorily enhances the mouth boundary model in an automated fashion.
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Computer Analysis of Images and Patterns: 19th International Conference, CAIP 2021, Virtual Event, September 28–30, 2021, Proceedings, Part I Computer Analysis of Images and Patterns: 19th International Conference, CAIP 2021, Virtual Event, September 28–30, 2021, Proceedings, Part II Computer Analysis of Images and Patterns: CAIP 2019 International Workshops, ViMaBi and DL-UAV, Salerno, Italy, September 6, 2019, Proceedings Computer Analysis of Images and Patterns: 18th International Conference, CAIP 2019, Salerno, Italy, September 3–5, 2019, Proceedings, Part I Computer Analysis of Images and Patterns: 18th International Conference, CAIP 2019, Salerno, Italy, September 3–5, 2019, Proceedings, Part II
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