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首页> 外文期刊>IEEE Transactions on Circuits and Systems for Video Technology >Rigid 3-D motion estimation using neural networks and initiallyestimated 2-D motion data
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Rigid 3-D motion estimation using neural networks and initiallyestimated 2-D motion data

机译:使用神经网络和初始估计的2D运动数据进行刚性3D运动估计

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This paper extends a known efficient technique for rigid three-dimensional (3-D) motion estimation so as to make it applicable to motion estimation problems occuring in image sequence coding applications. The known technique estimates 3-D motion using previously evaluated 3-D correspondence. However, in image sequence coding applications, 3-D correspondence is unknown and usually only two-dimensional (2-D) motion vectors are initially available. The novel neural network (NN) introduced in this paper uses initially estimated 2-D motion vectors to estimate 3-D rigid motion, and is therefore suitable for image sequence coding applications. Moreover, it is shown that the NN introduced in this paper performs extremely well even in cases where 3-D correspondence is known with accuracy. Experimental results are presented for the evaluation of the proposed scheme
机译:本文扩展了一种用于刚性三维(3-D)运动估计的已知有效技术,以使其可应用于图像序列编码应用中出现的运动估计问题。已知技术使用先前评估的3-D对应性来估计3-D运动。但是,在图像序列编码应用中,3-D对应关系是未知的,通常最初只有二维(2-D)运动矢量可用。本文介绍的新型神经网络(NN)使用初始估计的2-D运动矢量来估计3-D刚性运动,因此适合图像序列编码应用。而且,表明即使在准确知道3D对应关系的情况下,本文介绍的NN的性能也非常好。提出了实验结果以评估所提出的方案

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