A probabilistic dynamic contour model for accurate and robust lip tracking

Qiang Wang, H. Ai, Guangyou Xu
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引用次数: 6

Abstract

In this paper a new condensation style contour tracking method called probabilistic dynamic contour (PDC) is proposed for lip tracking: a novel mixture dynamic model is designed to represent shape more compactly and to tolerate larger motions between frames, a measurement model is designed to include multiple visual cues. The proposed PDC tracker has the advantage that it is conceptually general but effectively suitable for lip tracking with the designed dynamic and measurement model. The new tracker improves the traditional condensation style tracker in three aspects: Firstly, the dynamic model is partially derived from the image sequence, so the tracker does not need to learn the dynamics in advance. Secondly, the measurement model is easy to be updated during tracking, which avoids modeling the foreground object in prior. Thirdly, to improve the tracker's speed, a compact representation of shape and a noise model are proposed to reduce the samples required to represent the posterior distribution. An experiment on lip contour tracking shows that the proposed method tracks contours robustly as well as accurately compared to the existing tracking method.
一种精确鲁棒唇形跟踪的概率动态轮廓模型
本文提出了一种新的用于唇形跟踪的凝聚式轮廓跟踪方法——概率动态轮廓(PDC):设计了一种新的混合动态模型,以更紧凑地表示形状,并在帧间容忍更大的运动;设计了一个包含多个视觉线索的测量模型。所提出的PDC跟踪器在概念上是通用的,但在设计的动态和测量模型下能有效地适用于唇形跟踪。该跟踪器在三个方面对传统的冷凝式跟踪器进行了改进:首先,动态模型部分来源于图像序列,因此跟踪器不需要提前学习动态;其次,测量模型在跟踪过程中易于更新,避免了对前景目标进行先验建模;第三,为了提高跟踪器的速度,提出了形状的紧凑表示和噪声模型,以减少表示后验分布所需的样本。唇形跟踪实验表明,与现有唇形跟踪方法相比,该方法具有较好的鲁棒性和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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