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arxiv: 2208.06179 · v1 · pith:RXWL44AL · submitted 2022-08-12 · cs.CV · cs.AI

Exploiting Feature Diversity for Make-up Temporal Video Grounding

Reviewed by Pithpith:RXWL44ALopen to challenge →

classification cs.CV cs.AI
keywords featuremake-upmtvgne-grainedvideoaction-basedchallengeexploiting
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This technical report presents the 3rd winning solution for MTVG, a new task introduced in the 4-th Person in Context (PIC) Challenge at ACM MM 2022. MTVG aims at localizing the temporal boundary of the step in an untrimmed video based on a textual description. The biggest challenge of this task is the fi ne-grained video-text semantics of make-up steps. However, current methods mainly extract video features using action-based pre-trained models. As actions are more coarse-grained than make-up steps, action-based features are not sufficient to provide fi ne-grained cues. To address this issue,we propose to achieve fi ne-grained representation via exploiting feature diversities. Specifically, we proposed a series of methods from feature extraction, network optimization, to model ensemble. As a result, we achieved 3rd place in the MTVG competition.

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