A Log-likelihood Regularized KL Divergence for Video Prediction With a 3D Convolutional Variational Recurrent Network

Haziq Razali, Basura Fernando
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引用次数: 5

Abstract

The use of latent variable models has shown to be a powerful tool for modeling probability distributions over sequences. In this paper, we introduce a new variational model that extends the recurrent network in two ways for the task of video frame prediction. First, we introduce 3D convolutions inside all modules including the recurrent model for future frame prediction, inputting and outputting a sequence of video frames at each timestep. This enables us to better exploit spatiotemporal information inside the variational recurrent model, allowing us to generate high-quality predictions. Second, we enhance the latent loss of the variational model by introducing a maximum likelihood estimate in addition to the KL divergence that is commonly used in variational models. This simple extension acts as a stronger regularizer in the variational autoencoder loss function and lets us obtain better results and generalizability. Experiments show that our model outperforms existing video prediction methods on several benchmarks while requiring fewer parameters.
三维卷积变分递归网络视频预测的对数似然正则化KL散度
潜在变量模型的使用已被证明是对序列上的概率分布进行建模的有力工具。本文介绍了一种新的变分模型,它从两个方面扩展了递归网络,用于视频帧预测。首先,我们在所有模块中引入3D卷积,包括用于未来帧预测的循环模型,在每个时间步长输入和输出视频帧序列。这使我们能够更好地利用变分循环模型中的时空信息,使我们能够生成高质量的预测。其次,我们通过在变分模型中常用的KL散度之外引入最大似然估计来增强变分模型的潜在损失。这个简单的扩展在变分自编码器损失函数中充当了一个更强的正则化器,使我们获得了更好的结果和泛化性。实验表明,我们的模型在几个基准测试中优于现有的视频预测方法,同时需要更少的参数。
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