VDFP uses degradation field modeling based on rolling shutter and continuous prior perception with a flicker-aware loss to deflicker videos while preserving spatial-temporal details via zero-initialized pre-trained priors.
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cs.CV 3years
2026 3verdicts
UNVERDICTED 3representative citing papers
FIS-DiT achieves 2.11-2.41x speedup on video DiT models in few-step regimes with negligible quality loss by exploiting frame-wise sparsity and consistency through a training-free interleaved execution strategy.
HDR video generation is achieved by logarithmically encoding HDR imagery to align with pretrained generative model latents, enabling minimal fine-tuning and degradation-based inference of missing content.
citing papers explorer
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VDFP: Video Deflickering with Flicker-banding Priors
VDFP uses degradation field modeling based on rolling shutter and continuous prior perception with a flicker-aware loss to deflicker videos while preserving spatial-temporal details via zero-initialized pre-trained priors.
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FIS-DiT: Breaking the Few-Step Video Inference Barrier via Training-Free Frame Interleaved Sparsity
FIS-DiT achieves 2.11-2.41x speedup on video DiT models in few-step regimes with negligible quality loss by exploiting frame-wise sparsity and consistency through a training-free interleaved execution strategy.
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HDR Video Generation via Latent Alignment with Logarithmic Encoding
HDR video generation is achieved by logarithmically encoding HDR imagery to align with pretrained generative model latents, enabling minimal fine-tuning and degradation-based inference of missing content.