基于敏感点的面部三维模型配准

Yuhang Wu, I. Kakadiaris
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引用次数: 2

摘要

将3D面部模型注册到遮挡下的2D图像是困难的。首先,在遮挡下,并非所有检测到的面部标志都是准确的。其次,可靠地标的数量可能不足以限制这个问题。我们提出了一种合成附加点(敏感点)来创建姿态假设的方法。利用从基准点、非基准点和面部轮廓中提取的视觉线索来验证假设。我们定义了一个奖励函数来衡量投影的密集3D模型是否与两个全卷积网络生成的置信度图很好地对齐,并使用该函数来训练循环策略网络来移动敏感点。在测试中使用相同的奖励函数从候选假设池中选择最佳假设。实验结果表明,该方法在解决遮挡下的人脸模型配准问题上具有较好的应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Facial 3D model registration under occlusions with sensiblepoints-based reinforced hypothesis refinement
Registering a 3D facial model to a 2D image under occlusion is difficult. First, not all of the detected facial landmarks are accurate under occlusions. Second, the number of reliable landmarks may not be enough to constrain the problem. We propose a method to synthesize additional points (Sensible Points) to create pose hypotheses. The visual clues extracted from the fiducial points, non-fiducial points, and facial contour are jointly employed to verify the hypotheses. We define a reward function to measure whether the projected dense 3D model is well-aligned with the confidence maps generated by two fully convolutional networks, and use the function to train recurrent policy networks to move the Sensible Points. The same reward function is employed in testing to select the best hypothesis from a candidate pool of hypotheses. Experimentation demonstrates that the proposed approach is very promising in solving the facial model registration problem under occlusion.
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