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Learn to cycle: Time-consistent feature discovery for action recognition

机译:学会循环:动作识别的时间一致的特征发现

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摘要

Generalizing over temporal variations is a prerequisite for effective action recognition in videos. Despite significant advances in deep neural networks, it remains a challenge to focus on short-term discriminative motions in relation to the overall performance of an action. We address this challenge by allowing some flexibility in discovering relevant spatio-temporal features. We introduce Squeeze and Recursion Temporal Gates (SRTG), an approach that favors inputs with similar activations with potential temporal variations. We implement this idea with a novel CNN block that uses an LSTM to encapsulate feature dynamics, in conjunction with a temporal gate that is responsible for evaluating the consistency of the discovered dynamics and the modeled features. We show consistent improvement when using SRTG blocks, with only a minimal increase in the number of GFLOPs. On Kinetics-700, we perform on par with current state-of-the-art models, and outperform these on HACS, Moments in Time, UCF-101 and HMDB-51. 1 (C) 2020 The Authors. Published by Elsevier B.V.
机译:通过时间变化概括是视频中有效行动认可的先决条件。尽管深度神经网络有重大进展,但关注与行动总体绩效的短期歧视动作仍然是一项挑战。我们通过允许在发现相关的时空特征方面进行一些灵活性来解决这一挑战。我们介绍挤压和递归时间门(SRTG),一种方法,该方法有利于具有类似激活的输入,具有潜在的时间变化。我们通过新的CNN块来实现这个想法,该想法使用LSTM来封装特征动态,与一个负责评估发现动态和建模特征的一致性的时间门。我们在使用SRTG块时显示一致的改进,只有GFLOP的数量的最小增加。在Kinetics-700上,我们与当前最先进的模型执行,并且在HACS,时间的时刻,UCF-101和HMDB-51上表现出这些问题。 1(c)2020作者。由elsevier b.v出版。

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