Video understanding requires reasoning at multiple spatiotemporal resolutions -- from short fine-grained motions to events taking place over longer durations. Although transformer architectures have recently advanced the state-of-the-art, they have not explicitly modelled different spatiotemporal resolutions. To this end, we present Multiview Transformers for Video Recognition (MTV). Our model consists of separate encoders to represent different views of the input video with lateral connections to fuse information across views. We present thorough ablation studies of our model and show that MTV consistently performs better than single-view counterparts in terms of accuracy and computational cost across a range of model sizes. Furthermore, we achieve state-of-the-art results on five standard datasets, and improve even further with large-scale pretraining. We will release code and pretrained checkpoints.
翻译:视频理解需要多个时空分辨率的推理 -- -- 从简短的微小动议到长期发生的事件。虽然变压器结构最近已经提高了最新技术水平,但并没有明确模拟不同的时空分辨率。为此,我们提出视频识别多视角变换器。我们的模型由不同的编码器组成,以代表输入视频的不同观点,与各种观点的信息连接。我们提出了对模型的彻底对比研究,并表明MTV在精确度和计算成本方面,在一系列模型大小方面,在精确度和计算成本方面始终优于单一视角对等方。此外,我们还在五个标准数据集上取得了最先进的结果,并在大规模培训前取得了进一步的改进。我们将发布代码和预先培训的检查站。