Analyzing videos of human actions involves understanding the temporal
relationships among video frames. State-of-the-art action recognition
approaches rely on traditional optical flow estimation methods to pre-compute
motion information for CNNs. Such a two-stage approach is computationally
expensive, storage demanding, and not end-to-end trainable. In this paper, we
present a novel CNN architecture that implicitly captures motion information
between adjacent frames. We name our approach hidden two-stream CNNs because it
only takes raw video frames as input and directly predicts action classes
without explicitly computing optical flow. Our end-to-end approach is 10x
faster than its two-stage baseline. Experimental results on four challenging
action recognition datasets: UCF101, HMDB51, THUMOS14 and ActivityNet v1.2 show
that our approach significantly outperforms the previous best real-time
approaches.Comment: Accepted at ACCV 2018, camera ready. Code available at
https://github.com/bryanyzhu/Hidden-Two-Strea