MLCR organizes quality cues at intra-modal, cross-modal, and stage-wise levels to improve long-term multimodal action quality assessment, achieving top results on gymnastics datasets.
Umt: Unified multi-modal transformers for joint video moment retrieval and highlight detection
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MLCR: Multi-Level Cue Refinement for Long-Term Multimodal Action Quality Assessment
MLCR organizes quality cues at intra-modal, cross-modal, and stage-wise levels to improve long-term multimodal action quality assessment, achieving top results on gymnastics datasets.