3D Object Tracking Using Mean-Shift and Similarity-Based Aspect-Graph Modeling

Jwusheng Hu, T. Su, Chung-Wei Juan, G. Wang
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引用次数: 5

Abstract

The mean shift algorithm is a popular method in the field of 2D object tracking due to its simplicity and robustness over slight variations of lighting condition, scale and view-point over time. However, the appearance of 3D object might have distinctive variations for different viewpoints over time. In this work, a novel method for tracking 3D objects using mean-shift algorithm and a 3D object database is proposed to achieve a more precise tracking. A 3D object database using similarity-based aspect-graph is built from 2D images sampled at random intervals from the viewing sphere. Contour and color features of each 2D image are used for modeling the 3D object database. To conduct tracking, a suitable object model is selected from the database and the mean-shift tracking is applied to find the local minima of a similarity measure between the color histograms of the object model and the target image. The effectiveness of the proposed method is demonstrated by experiments with objects rotating and translating in space.
使用Mean-Shift和基于相似性的方面图建模的三维目标跟踪
均值移位算法在光照条件、尺度和视点随时间的微小变化下具有简单性和鲁棒性,是目前二维目标跟踪领域的一种常用方法。然而,随着时间的推移,3D物体的外观可能会有不同的变化。本文提出了一种利用mean-shift算法和三维目标数据库相结合的三维目标跟踪方法,以实现更精确的目标跟踪。以随机采样的二维图像为基础,建立了基于相似度的三维物体数据库。利用每个二维图像的轮廓和颜色特征对三维对象数据库进行建模。为了进行跟踪,从数据库中选择合适的目标模型,并应用mean-shift跟踪来寻找目标模型的颜色直方图与目标图像之间相似度量的局部最小值。通过物体在空间中旋转和平移的实验验证了该方法的有效性。
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