On the Integration of Optical Flow and Action Recognition
Laura Sevilla-Lara, Yiyi Liao, Fatma Guney, Varun Jampani, Andreas, Geiger, Michael J. Black

TL;DR
This paper investigates how optical flow contributes to action recognition, analyzing different algorithms and training methods to improve understanding and performance in combining these techniques.
Contribution
It provides new insights into the relationship between optical flow quality and action recognition accuracy, and proposes training flow methods directly for recognition tasks.
Findings
Optical flow invariance to appearance aids recognition
Current flow methods' EPE does not strongly correlate with recognition performance
Training flow for classification improves action recognition accuracy
Abstract
Most of the top performing action recognition methods use optical flow as a "black box" input. Here we take a deeper look at the combination of flow and action recognition, and investigate why optical flow is helpful, what makes a flow method good for action recognition, and how we can make it better. In particular, we investigate the impact of different flow algorithms and input transformations to better understand how these affect a state-of-the-art action recognition method. Furthermore, we fine tune two neural-network flow methods end-to-end on the most widely used action recognition dataset (UCF101). Based on these experiments, we make the following five observations: 1) optical flow is useful for action recognition because it is invariant to appearance, 2) optical flow methods are optimized to minimize end-point-error (EPE), but the EPE of current methods is not well correlated…
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