Object-Oriented Motion Estimation using Edge-Based Image Registration

Md. Asikuzzaman, Deepak Rajamohan, M. Pickering
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Abstract

Video data storage and transmission cost can be reduced by minimizing the temporally redundant information among frames using an appropriate motion-compensated prediction technique. In the current video coding standard, the neighbouring frames are exploited to predict the motion of the current frame using global motion estimation-based approaches. However, the global motion estimation of a frame may not produce the actual motion of individual objects in the frame as each of the objects in a frame usually has its own motion. In this paper, an edge-based motion estimation technique is presented that finds the motion of each object in the frame rather than finding the global motion of that frame. In the proposed method, edge position difference (EPD) similarity measure-based image registration between the two frames is applied to register each object in the frame. A superpixel search is then applied to segment the registered object. Finally, the proposed edge-based image registration technique and Demons algorithm are applied to predict the objects in the current frame. Our experimental analysis demonstrates that the proposed algorithm can estimate the motions of individual objects in the current frame accurately compared to the existing global motion estimation-based approaches.
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基于边缘图像配准的面向对象运动估计
采用适当的运动补偿预测技术,最大限度地减少帧间的时间冗余信息,从而降低视频数据的存储和传输成本。在当前的视频编码标准中,使用基于全局运动估计的方法利用相邻帧来预测当前帧的运动。然而,一帧的全局运动估计可能不会产生帧中单个物体的实际运动,因为一帧中的每个物体通常都有自己的运动。本文提出了一种基于边缘的运动估计技术,该技术可以发现帧中每个物体的运动,而不是寻找该帧的全局运动。该方法采用基于边缘位置差(EPD)相似度度量的两帧图像配准方法对帧内的目标进行配准。然后应用超像素搜索对注册对象进行分割。最后,利用本文提出的基于边缘的图像配准技术和Demons算法对当前帧中的目标进行预测。实验分析表明,与现有的基于全局运动估计的方法相比,该算法可以准确地估计当前帧中单个物体的运动。
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