In this paper, we empirically study how to make the most of low-resolution frames for efficient video recognition. Existing methods mainly focus on developing compact networks or alleviating temporal redundancy of video inputs to increase efficiency, whereas compressing frame resolution has rarely been considered a promising solution. A major concern is the poor recognition accuracy on low-resolution frames. We thus start by analyzing the underlying causes of performance degradation on low-resolution frames. Our key finding is that the major cause of degradation is not information loss in the down-sampling process, but rather the mismatch between network architecture and input scale. Motivated by the success of knowledge distillation (KD), we propose to bridge the gap between network and input size via cross-resolution KD (ResKD). Our work shows that ResKD is a simple but effective method to boost recognition accuracy on low-resolution frames. Without bells and whistles, ResKD considerably surpasses all competitive methods in terms of efficiency and accuracy on four large-scale benchmark datasets, i.e., ActivityNet, FCVID, Mini-Kinetics, Something-Something V2. In addition, we extensively demonstrate its effectiveness over state-of-the-art architectures, i.e., 3D-CNNs and Video Transformers, and scalability towards super low-resolution frames. The results suggest ResKD can serve as a general inference acceleration method for state-of-the-art video recognition. Our code will be available at https://github.com/CVMI-Lab/ResKD.
翻译:在本文中,我们从经验上研究如何充分利用低分辨率框架来提高视频识别效率。现有方法主要侧重于开发紧凑网络或减少视频投入的时间冗余以提高效率,而压缩框架决议却很少被视为一个有希望的解决办法。一个主要的关切是低分辨率框架的识别准确性差。因此,我们首先分析低分辨率框架性能退化的根本原因。我们的关键发现,退化的主要原因不是下取样过程中的信息损失,而是网络架构和输入比例之间的不匹配。受知识蒸馏成功(KD)的激励,我们提议通过交叉分辨率 KD(ResKD)来弥合网络和投入规模之间的差距。我们的工作表明,ResKD是一个简单而有效的方法,可以提高低分辨率框架的识别准确性。没有铃声和哨,ResKD在四个大型基准数据集的效率和准确性方面大大超过所有竞争方法,即活动网、FCVID、Mini-Kinetic、Some-Ds-Simart V2.我们广泛展示其效率,在视频-D的快速度结构中,我们可以显示其超标的图像/Creab-deal-degrational-deal as supal as suplivial resligal as supligistrational astration supal supal