TORNADO: A Spatio-Temporal Convolutional Regression Network for Video Action Proposal

Hongyuan Zhu, Romain Vial, Shijian Lu
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引用次数: 56

Abstract

Given a video clip, action proposal aims to quickly generate a number of spatio-temporal tubes that enclose candidate human activities. Recently, the regression-based networks and long-term recurrent convolutional network (L-RCN) have demonstrated superior performance in object detection and action recognition. However, the regression-based detectors perform inference without considering the temporal context among neighboring frames, and the LRC-N using global visual percepts lacks the capability to capture local temporal dynamics. In this paper, we present a novel framework called TORNADO for human action proposal detection in un-trimmed video clips. Specifically, we propose a spatio-temporal convolutional network that combines the advantages of regression-based detector and L-RCN by empowering Convolutional LSTM with regression capability. Our approach consists of a temporal convolutional regression network (T-CRN) and a spatial regression network (S-CRN) which are trained end-to-end on both RGB and optical flow streams. They fuse appearance, motion and temporal contexts to regress the bounding boxes of candidate human actions simultaneously in 28 FPS. The action proposals are constructed by solving dynamic programming with peak trimming of the generated action boxes. Extensive experiments on the challenging UCF-101 and UCF-Sports datasets show that our method achieves superior performance as compared with the state-of-the-arts.
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龙卷风:一个时空卷积回归网络的视频动作建议
给定一个视频片段,行动提案旨在快速生成一些包含候选人类活动的时空管。近年来,基于回归的网络和长期递归卷积网络(L-RCN)在目标检测和动作识别方面表现出了优异的性能。然而,基于回归的检测器执行推理时没有考虑相邻帧之间的时间上下文,并且使用全局视觉感知的LRC-N缺乏捕获局部时间动态的能力。在本文中,我们提出了一个名为TORNADO的新框架,用于在未修剪的视频片段中检测人类动作建议。具体来说,我们提出了一个时空卷积网络,它结合了基于回归的检测器和L-RCN的优点,赋予卷积LSTM回归能力。我们的方法包括一个时间卷积回归网络(T-CRN)和一个空间回归网络(S-CRN),它们在RGB和光流上进行端到端训练。它们融合了外观,动作和时间背景,从而在28 FPS中同时还原候选人类行动的边界框。通过对生成的动作框进行削峰处理,求解动态规划,构造动作建议。在具有挑战性的UCF-101和UCF-Sports数据集上进行的大量实验表明,与最先进的方法相比,我们的方法具有优越的性能。
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