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Using independently recurrent networks for reinforcement learning based unsupervised video summarization

机译:基于无监督的视频概述的基于钢筋学习的独立反复网络

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摘要

Sigmoid and hyperbolic activation functions in long short-term memory (LSTM) and gated recurrent unit (GRU) based models used in recent studies on video summarization, may cause gradient decay over layers. Moreover, interpreting and developing network models are difficult because of entanglement of neurons on recurrent neural network (RNN). To solve these issues, in this study, we propose a method that uses deep reinforcement learning together with independently recurrent neural networks (IndRNN) for unsupervised video summarization. In this method, Leaky Rectified Linear Unit (Leaky ReLU) is used as an activation function to deal with decaying gradient and dying neuron problems. The model, which does not rely on any labels or user interaction, is designed with a reward function that jointly accounts for uniformity, diversity and representativeness of generated summaries. In this way, our model can create summaries as uniform as possible, has more layers and can be trained with more steps without having any problem related to gradients. Based on the experiments conducted on two benchmark datasets, we observe that, compared to the state-of-the-art methods on video summarization task, better summarization performance can be obtained.
机译:在近期视频概述研究中使用的长短期存储器(LSTM)和所使用的旋转复制单元(GRU)的模型中使用的模型的Sigmoid和双曲激活功能可能导致层梯度衰减。此外,由于在经常性神经网络(RNN)上的神经元缠结,解释和开发网络模型很难。为了解决这些问题,在本研究中,我们提出了一种方法,该方法使用深度加强学习以及独立复发性神经网络(INDRNN)进行无监督的视频摘要。在该方法中,泄漏的整流线性单元(泄漏Relu)用作处理衰减梯度和染色神经元问题的激活功能。该模型不依赖于任何标签或用户交互,设计具有奖励功能,共同占生成摘要的均匀性,多样性和代表性。通过这种方式,我们的模型可以尽可能统一地创建摘要,具有更多层,可以使用更多的步骤培训,而不会对梯度有任何问题。基于在两个基准数据集进行的实验,我们观察到,与视频摘要任务的最先进方法相比,可以获得更好的摘要性能。

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