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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Global motion estimation with iterative optimization-based independent univariate model for action recognition
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Global motion estimation with iterative optimization-based independent univariate model for action recognition

机译:基于迭代优化的独立单变量模型的全局运动估算

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摘要

Motion information used in the existed video action recognition schemes is mixing of global motion(GM) and local motion(LM). In fact, GM & LM have their respective semantic concepts. Thus, it is promising to decouple GM and LM from the mixed motions. Numerous effort s have been made on the design of global motion models for video encoding, video dejittering, video denoising, and so on. Nevertheless, some of the models are too basic to cover the camera motions in action recognition while others are over-complicated. In this paper, we focus on the characteristic of the action recognition and propose a novel independent univariate GM model. It ignores camera rotation, which appears rarely in action recognition videos, and represents the GM in x and y direction respectively. Furthermore, GM is position invariant because it is from the universal camera motion. Pixels with global motions are subjected to the same parametric model and pixels with mixed motion can be seen as outliers. Motivated by this, we develop an iterative optimization scheme for GM estimation which removes the outlier points step by step and estimates global motions in a coarse-to-fine manner. Finally, the LM is estimated through a Spatio-temporal threshold-based method. Experimental results demonstrate that the proposed GM model makes a better trade-off between the model complexity and the robustness. And the iterative optimization scheme is more effective than the existed algorithms. The compared experiments using four popular action recognition models on UCF-101 (for action recognition) and NCAA (for group activity recognition) demonstrate that local motions are more effective than the mixed motions.& nbsp; (c) 2021 Elsevier Ltd. All rights reserved.
机译:现有的视频动作识别方案中使用的运动信息是全局运动(GM)和局部运动(LM)的混合。事实上,GM和LM有各自的语义概念。因此,有希望将GM和LM从混合运动中解耦。在设计用于视频编码、视频去抖动、视频去噪等的全局运动模型方面已经做了大量工作。然而,一些模型过于基本,无法涵盖动作识别中的相机运动,而另一些模型过于复杂。本文针对动作识别的特点,提出了一种新的独立单变量GM模型。它忽略了摄像机旋转,这在动作识别视频中很少出现,并分别表示x和y方向的GM。此外,GM是位置不变的,因为它来自通用相机运动。具有全局运动的像素受到相同的参数化模型的约束,具有混合运动的像素可以被视为异常值。基于此,我们开发了一种用于GM估计的迭代优化方案,该方案一步一步地去除异常点,并以从粗到精的方式估计全局运动。最后,通过基于时空阈值的方法估计LM。实验结果表明,该模型在模型复杂度和鲁棒性之间取得了较好的平衡。迭代优化方案比现有算法更有效。在UCF-101(用于动作识别)和NCAA(用于团体活动识别)上使用四种流行的动作识别模型进行的对比实验表明,局部运动比混合运动更有效nbsp;(c)2021爱思唯尔有限公司保留所有权利。

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