基于层次模型融合的鲁棒视觉词汇跟踪

B. Bozorgtabar, Roland Göcke
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引用次数: 0

摘要

本文提出了一种基于层次模型融合框架的视觉跟踪方法,该方法将两个不同的跟踪器融合在一起,以应对不同的跟踪问题。我们使用增量多主成分分析跟踪器作为我们的主模型,图像补丁跟踪器作为我们的辅助模型。首先,我们在训练帧中对主模型得到的目标区域内的图像块进行随机采样,利用梯度直方图特征构建视觉词汇表。其次,我们使用了基于高斯混合模型的监督学习算法,该算法不仅对监督信息进行操作,提高了聚类的判别能力,而且提高了聚类的纯度。然后,根据候选图像与码字的相似度获得图像补丁的置信度分数,初始化辅助模型;此外,该跟踪方法还包括一个更新过程和一个结果细化方案。在具有挑战性的视频序列上的实验证明了该方法在处理遮挡、姿态变化和旋转方面的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust Visual Vocabulary Tracking Using Hierarchical Model Fusion
In this paper, we propose a new visual tracking approach based on the Hierarchical Model Fusion framework, which fuses two different trackers to cope with different tracking problems. We use an Incremental Multiple Principal Component Analysis tracker as our main model as well as an image patch tracker as our auxiliary model. Firstly, we randomly sample image patches within the target region obtained by the main model in the training frames for constructing a visual vocabulary using Histogram of Oriented Gradient features. Secondly, we use a supervised learning algorithm based on a Gaussian Mixture Model, which not only operates on supervised information to improve the discriminative power of the clusters, but also increases the purity of the clusters. Then, auxiliary models are initialised by obtaining confidence scores of image patches based on the similarity between candidates and codewords. In addition, an updating procedure and a result refinement scheme are included in the proposed tracking approach. Experiments on challenging video sequences demonstrate the robustness of the proposed approach to handling occlusion, pose variation and rotation.
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