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Optical flow constraints on deformable models with applications to face tracking

机译:变形模型上的光流约束及其在人脸跟踪中的应用

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Optical flow provides a constraint on the motion of a deformable model. We derive and solve a dynamic system incorporating flow as a hard constraint, producing a model-based least-squares optical flow solution. Our solution also ensures the constraint remains satisfied when combined with edge information, which helps combat tracking error accumulation. Constraint enforcement can be relaxed using a Kalman filter, which permits controlled constraint violations based on the noise present in the optical flow information, and enables optical flow and edge information to be combined more robustly and efficiently. We apply this framework to the estimation of face shape and motion using a 3D deformable face model. This model uses a small number of parameters to describe a rich variety of face shapes and facial expressions. We present experiments in extracting the shape and motion of a face from image sequences which validate the accuracy of the method. They also demonstrate that our treatment of optical flow as a hard constraint, as well as our use of a Kalman filter to reconcile these constraints with the uncertainty in the optical flow, are vital for improving the performance of our system. [References: 51]
机译:光流对可变形模型的运动提供了约束。我们推导并解决了一个将流作为硬约束的动态系统,从而产生了基于模型的最小二乘光学流解决方案。我们的解决方案还可以确保在与边缘信息结合时仍能满足约束条件,从而有助于消除跟踪误差的累积。可以使用卡尔曼滤波器来放松约束的实施,该卡尔曼滤波器允许基于光流信息中存在的噪声来控制约束违规,并使光流和边缘信息更可靠,更有效地组合在一起。我们将此框架应用于使用3D可变形人脸模型估算人脸形状和运动。该模型使用少量参数来描述多种面部形状和面部表情。我们提出了从图像序列中提取人脸形状和运动的实验,验证了该方法的准确性。他们还证明,将光流视为硬约束,以及使用卡尔曼滤波器将这些约束与光流中的不确定性进行协调,对于改善系统性能至关重要。 [参考:51]

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