Advancements in attention mechanisms have led to significant performance improvements in a variety of areas in machine learning due to its ability to enable the dynamic modeling of temporal sequences. A particular area in computer vision that is likely to benefit greatly from the incorporation of attention mechanisms in video action recognition. However, much of the current research's focus on attention mechanisms have been on spatial and temporal attention, which are unable to take advantage of the inherent motion found in videos. Motivated by this, we develop a new attention mechanism called Motion Aware Attention (M2A) that explicitly incorporates motion characteristics. More specifically, M2A extracts motion information between consecutive frames and utilizes attention to focus on the motion patterns found across frames to accurately recognize actions in videos. The proposed M2A mechanism is simple to implement and can be easily incorporated into any neural network backbone architecture. We show that incorporating motion mechanisms with attention mechanisms using the proposed M2A mechanism can lead to a +15% to +26% improvement in top-1 accuracy across different backbone architectures, with only a small increase in computational complexity. We further compared the performance of M2A with other state-of-the-art motion and attention mechanisms on the Something-Something V1 video action recognition benchmark. Experimental results showed that M2A can lead to further improvements when combined with other temporal mechanisms and that it outperforms other motion-only or attention-only mechanisms by as much as +60% in top-1 accuracy for specific classes in the benchmark.
翻译:关注机制的提高使机器学习领域各个领域的绩效有了显著的改善,这是因为机器学习能够使时间序列的动态建模成为动态模型。计算机视觉中的一个特定领域可能因将关注机制纳入视频行动识别而大有益处。然而,目前研究对关注机制的关注大多集中在空间和时间上,这些关注机制无法利用视频中发现的内在动作。为此,我们开发了一个新的关注机制,称为 " 感知关注运动 " (M2A),明确纳入运动特点。更具体地说,M2A提取连续框架之间的运动信息,利用对跨框架所发现运动模式的注意,以准确识别视频中的行动。拟议的M2A机制易于实施,并可很容易地纳入任何神经网络主干结构。我们表明,将运动机制与关注机制相结合,利用拟议的M2A机制,可以导致在不同主干结构中将头一级关注率提高15%至26%,而计算复杂性仅略有增加。我们进一步将M2A的绩效与其他P1级和跨框架的移动模式的动作模式加以进一步对比,同时将其他的动态实验性运动和动态前期机制视为其他的升级机制。