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首页> 外文期刊>Journal of visual communication & image representation >Magnitude-Orientation Stream network and depth information applied to activity recognition
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Magnitude-Orientation Stream network and depth information applied to activity recognition

机译:幅度定向流网络和​​深度信息应用​​于活动识别

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The temporal component of videos provides an important clue for activity recognition, as a number of activities can be reliably recognized based on the motion information. In view of that, this work proposes a novel temporal stream for two-stream convolutional networks based on images computed from the optical flow magnitude and orientation, named Magnitude-Orientation Stream (MOS), to learn the motion in a better and richer manner. Our method applies simple non-linear transformations on the vertical and horizontal components of the optical flow to generate input images for the temporal stream. Moreover, we also employ depth information to use as a weighting scheme on the magnitude information to compensate the distance of the subjects performing the activity to the camera. Experimental results, carried on two well-known datasets (UCF101 and NTU), demonstrate that using our proposed temporal stream as input to existing neural network architectures can improve their performance for activity recognition. Results demonstrate that our temporal stream provides complementary information able to improve the classical two-stream methods, indicating the suitability of our approach to be used as a temporal video representation. (C) 2019 Elsevier Inc. All rights reserved.
机译:视频的时间成分为活动识别提供了重要线索,因为可以基于运动信息可靠地识别许多活动。有鉴于此,这项工作提出了一种新的基于两流卷积网络的时间流,该流基于从光流大小和方向计算出的图像(称为磁取向流(MOS)),以更好和更丰富的方式学习运动。我们的方法对光流的垂直和水平分量应用简单的非线性变换,以生成时间流的输入图像。此外,我们还采用深度信息作为幅度信息的加权方案,以补偿执行活动的对象到相机的距离。在两个著名的数据集(UCF101和NTU)上进行的实验结果表明,使用我们提出的时间流作为现有神经网络体系结构的输入可以提高其用于活动识别的性能。结果表明,我们的时间流提供了能够改进经典两流方法的补充信息,表明我们的方法适合用作时间视频表示。 (C)2019 Elsevier Inc.保留所有权利。

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