AI RESEARCH
Learning Consistent Temporal Grounding between Related Tasks in Sports Coaching
arXiv CS.CV
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ArXi:2603.18453v1 Announce Type: new Video-LLMs often attend to irrelevant frames, which is especially detrimental for sports coaching tasks requiring precise temporal grounding. Yet obtaining frame-level supervision is challenging: expensive to collect from humans and unreliable from other models. We improve temporal grounding without additional annotations by exploiting the observation that related tasks, such as generation and verification, must attend to the same frames. We enforce this via a self-consistency objective over select visual attention maps of tightly-related tasks.