Shallow Optical Flow Three-Stream Cnn For Macro- And Micro-Expression Spotting From Long Videos
Gen-Bing Liong, John See, Lai-Kuan Wong
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In recent years, the analysis of micro-expressions--- a natural occurrence resulting from the suppression of one's true emotions, has drawn the attention of researchers with a broad range of potential applications. However, spotting micro-expressions in long videos becomes increasingly challenging when intertwined with normal or macro-expressions. In this paper, we propose a shallow optical flow three-stream CNN (SOFTNet) model to predict a score that captures the likelihood of a frame being in an expression interval. By fashioning the spotting task as a regression problem, we introduce pseudo-labeling to facilitate the learning process. We demonstrate the efficacy and efficiency of the proposed approach on the recent MEGC 2020 benchmark, where state-of-the-art performance is achieved on CAS(ME)^2 with equally promising results on SAMM Long Videos.