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arxiv 2401.16076 v1 pith:MJ5C5I3Q submitted 2024-01-29 cs.CV cs.MM

Find the Cliffhanger: Multi-Modal Trailerness in Soap Operas

classification cs.CV cs.MM
keywords momentsmulti-modaltrailernesschallengingcliffhangerinformationpredictingrequires
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Creating a trailer requires carefully picking out and piecing together brief enticing moments out of a longer video, making it a challenging and time-consuming task. This requires selecting moments based on both visual and dialogue information. We introduce a multi-modal method for predicting the trailerness to assist editors in selecting trailer-worthy moments from long-form videos. We present results on a newly introduced soap opera dataset, demonstrating that predicting trailerness is a challenging task that benefits from multi-modal information. Code is available at https://github.com/carlobretti/cliffhanger

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