一种基于自适应加权向量中值滤波的运动向量离群值去除方法

M. Okade, P. Biswas
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引用次数: 5

摘要

本文提出了一种基于自适应加权向量中值滤波的全局(摄像机)运动估计运动向量离群值去除技术。基于运动矢量的全局运动估计算法的精度高度依赖于系统对异常运动矢量的抑制能力。异常运动向量可能是由于噪声、前景对象或编码器的压缩要求。我们的想法是基于这样一个前提,即通过最小化离群运动向量的影响,可以提高全局运动估计算法的效率。在我们的工作中,使用自适应加权向量中值滤波器对运动向量场进行平滑,然后将平滑的运动向量场与输入运动向量场进行比较,以检测异常值。然后将检测到的异常值从全局运动估计过程中排除,以获得相机运动参数的鲁棒估计。我们将所提出的方法与现有的使用合成和真实视频序列的异常值抑制技术进行了比较,以表明所提出方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel motion vector outlier removal technique based on adaptive weighted vector median filtering for global motion estimation
In this paper we propose a novel motion vector outlier removal technique for global (camera) motion estimation based on adaptively weighted vector median filtering. The accuracy of motion vector based global motion estimation algorithms is highly dependent on the ability of the system to reject outlier motion vectors. The outlier motion vectors may be due to noise, foreground objects or due to the encoders compression requirements. Our idea is based on the premise that by minimizing the effect of outlier motion vectors, the efficiency of the global motion estimation algorithms can be improved. In our work, the adaptively weighted vector median filter is used to smoothen the motion vector field followed by comparison of the smoothed motion vector field with the input motion vector field to detect the outliers. The detected outliers are then excluded from the global motion estimation process to get a robust estimate of the camera motion parameters. We compare our proposed method with existing outlier rejection techniques using both synthetic as well as real video sequences to show the effectiveness of our proposed method.
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