分级结构下的RGB-D跟踪器

Yifan Li, Xuan Wang, Z. L. Jiang, Shuhan Qi, Xinhui Liu, Qian Chen
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引用次数: 0

摘要

如何对目标进行鲁棒跟踪是计算机视觉领域的一个具有挑战性的课题。遮挡是最困难的问题之一,由于三维对象在二维界面上投影时信息丢失,因此采用深度信息的二维或三维跟踪算法期望依靠三维特殊结构来解决这些问题,并取得了一定进展。二维跟踪算法在充分利用深度信息方面效率不高,三维跟踪方法由于缺乏成熟的三维特征提取方法,鲁棒性不强,相当制约了实际跟踪效果。针对上述问题,我们提出采用自适应量化深度信息,根据不同场景建立自适应层次结构。分层结构可以过滤前景和背景信息,减少跟踪中的干扰,同时简化深度信息的使用。结合核相关滤波跟踪方法,利用空间结构下的二维视像模型设计了该算法,有效地处理了遮挡和目标尺度变化问题,并在普林斯顿跟踪数据集上证明了该算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RGB-D tracker under Hierarchical structure
How to track the target robustly is a challenging task in the field of computer vision. Occlusion as one of the most difficult problems, occurs due to the information lost when three-dimensional subjects are projected in two-dimensional interface, therefore, the 2D or 3D tracking algorithms which adopted depth information that expects to rely on three-dimensional special structure to resolve these problems and made somewhat progress. The 2D tracking algorithm is not efficient in fully using depth information, and the 3D tracking method is not robust because of the lack of mature 3D feature extraction method, which fairly restricts the actual tracking effect. Responding to above questions, we propose an adoption of adaptive quantified depth information, establish an adaptive hierarchical structure according to various scenarios. Hierarchical structure can filter the foreground and background information to reduce the interference in tracking, at the same time simplify the use of the depth information. Combined with kernel correlation filter tracking method, we design the algorithm using 2D apparent model under the spatial structures, which is efficient to deal with the problems of occlusion and the change of target scale, and prove its effectiveness on Princeton Tracking Dataset.
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