基于运动状态估计的移动增强现实姿态跟踪

Tatsuya Kobayashi, H. Kato, H. Yanagihara
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引用次数: 4

摘要

提出了一种有效的移动增强现实姿态跟踪方法。尽管传统的基于金字塔的粗到精方法具有良好的精度和鲁棒性,但对于低规格的移动设备来说过于复杂,加速姿态跟踪至关重要。该方法注重连续帧之间运动的快速性和线性性,并通过运动状态估计(MSE)和切换跟踪算法,省去了在稳定场景中进行粗跟踪等不必要的处理。实验结果表明,通过对一系列测试序列选择最合适的跟踪算法,我们的方法始终比传统的姿态跟踪快近50%,而没有任何精度和鲁棒性损失。
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Pose tracking using motion state estimation for mobile augmented reality
We present an efficient pose tracking method for mobile augmented reality. Although the conventional pyramid-based coarse-to-fine approach has good precision and robustness, it is too complex for low-spec mobile devices and speeding up pose tracking is essential. The proposed method focuses on the rapidity and linearity of the movement between successive frames, and omits unnecessary processing such as coarse tracking in a stable scene by performing motion state estimation (MSE) and switching the tracking algorithm accordingly. Experimental results demonstrate that our method is consistently faster than conventional pose tracking by nearly fifty percent, without any loss of precision or robustness by selecting the most appropriate tracking algorithm for a range of test sequences.
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