VEMOCLAP: A video emotion classification web application
We introduce VEMOCLAP: Video EMOtion Classifier using Pretrained features, the first readily available and open-source web application that analyzes the emotional content of any user-provided video. We improve our previous work, which exploits open-source pretrained models that work on video frames...
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Zusammenfassung: | We introduce VEMOCLAP: Video EMOtion Classifier using Pretrained features,
the first readily available and open-source web application that analyzes the
emotional content of any user-provided video. We improve our previous work,
which exploits open-source pretrained models that work on video frames and
audio, and then efficiently fuse the resulting pretrained features using
multi-head cross-attention. Our approach increases the state-of-the-art
classification accuracy on the Ekman-6 video emotion dataset by 4.3% and offers
an online application for users to run our model on their own videos or YouTube
videos. We invite the readers to try our application at serkansulun.com/app. |
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DOI: | 10.48550/arxiv.2410.21303 |