A Multi-stream Bi-directional Recurrent Neural Network for Fine-Grained Action Detection

Bharat Singh, Tim K. Marks, Michael J. Jones, Oncel Tuzel, Ming Shao
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引用次数: 416

Abstract

We present a multi-stream bi-directional recurrent neural network for fine-grained action detection. Recently, twostream convolutional neural networks (CNNs) trained on stacked optical flow and image frames have been successful for action recognition in videos. Our system uses a tracking algorithm to locate a bounding box around the person, which provides a frame of reference for appearance and motion and also suppresses background noise that is not within the bounding box. We train two additional streams on motion and appearance cropped to the tracked bounding box, along with full-frame streams. Our motion streams use pixel trajectories of a frame as raw features, in which the displacement values corresponding to a moving scene point are at the same spatial position across several frames. To model long-term temporal dynamics within and between actions, the multi-stream CNN is followed by a bi-directional Long Short-Term Memory (LSTM) layer. We show that our bi-directional LSTM network utilizes about 8 seconds of the video sequence to predict an action label. We test on two action detection datasets: the MPII Cooking 2 Dataset, and a new MERL Shopping Dataset that we introduce and make available to the community with this paper. The results demonstrate that our method significantly outperforms state-of-the-art action detection methods on both datasets.
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用于细粒度动作检测的多流双向递归神经网络
提出了一种用于细粒度动作检测的多流双向递归神经网络。近年来,基于堆叠光流和图像帧训练的双流卷积神经网络(cnn)在视频动作识别中取得了成功。我们的系统使用跟踪算法来定位人周围的边界框,这为外观和运动提供了参考框架,并且还抑制了不在边界框内的背景噪声。我们训练两个额外的流的运动和外观裁剪到跟踪的边界框,以及全帧流。我们的运动流使用帧的像素轨迹作为原始特征,其中移动场景点对应的位移值在多个帧中处于相同的空间位置。为了模拟动作内部和动作之间的长期动态,多流CNN之后是一个双向长短期记忆(LSTM)层。我们表明,我们的双向LSTM网络利用大约8秒的视频序列来预测动作标签。我们在两个动作检测数据集上进行了测试:MPII烹饪2数据集,以及我们在本文中介绍并向社区提供的新的MERL购物数据集。结果表明,我们的方法在两个数据集上都明显优于最先进的动作检测方法。
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