LMM-10K: Large-Scale 4K Multimodal Dataset for Perceptual, Semantic, and Content-Aware Video Processing
ACM Multimedia 2026
November 10 – November 14, 2026
Rio de Janeiro, Brazil
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Mohammad Ghasempour (AAU, Austria), Yiying Wei (AAU, Austria), Hadi Amirpour (AAU, Austria), Christian Timmerer (AAU, Austria)
Abstract: The growing integration of vision and language models is driving a fundamental shift in video understanding and processing. This evolution calls for datasets that jointly capture visual content and its semantic representations at scale. To address this need, we introduce LMM-10K, a large-scale, curated multimodal dataset comprising 10,000 high-fidelity 4K video sequences at 60 fps with rich semantic and perceptual annotations. We developed an automated acquisition pipeline to curate videos from the Pexels repository, using targeted search queries and strict filtering criteria to capture a wide range of real-world scenes. Beyond the video sequences, LMM-10K is enriched with comprehensive multimodal annotations that integrate low-level visual features with high-level semantic information. These include LLM-generated semantic descriptors, no-reference quality metrics, spatial-temporal complexity metrics, and visual diversity attributes. By combining structured annotations with high-quality video data, LMM-10K provides a versatile resource for a wide range of applications, including video enhancement, content-aware compression and streaming, neural video coding, multimodal learning, generative video modeling, and perceptual quality modeling. Dataset URL: Link













