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The Kinetics Human Action Video Dataset

Baseline reference. 62% of citing Pith papers use this work as a benchmark or comparison.

119 Pith papers citing it
Baseline 62% of classified citations
abstract

We describe the DeepMind Kinetics human action video dataset. The dataset contains 400 human action classes, with at least 400 video clips for each action. Each clip lasts around 10s and is taken from a different YouTube video. The actions are human focussed and cover a broad range of classes including human-object interactions such as playing instruments, as well as human-human interactions such as shaking hands. We describe the statistics of the dataset, how it was collected, and give some baseline performance figures for neural network architectures trained and tested for human action classification on this dataset. We also carry out a preliminary analysis of whether imbalance in the dataset leads to bias in the classifiers.

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  • abstract We describe the DeepMind Kinetics human action video dataset. The dataset contains 400 human action classes, with at least 400 video clips for each action. Each clip lasts around 10s and is taken from a different YouTube video. The actions are human focussed and cover a broad range of classes including human-object interactions such as playing instruments, as well as human-human interactions such as shaking hands. We describe the statistics of the dataset, how it was collected, and give some baseline performance figures for neural network architectures trained and tested for human action class

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representative citing papers

MMDG-Bench: A Benchmark for Multimodal Domain Generalization

cs.CV · 2026-05-30 · unverdicted · novelty 7.0

MMDG-Bench provides unified protocols and ten baselines for multimodal domain generalization, showing structured DG-MML combinations often outperform prior methods with insights on framework choice and backbone effects.

An Attribute-Based Measure of Video Complexity

cs.CV · 2026-05-30 · unverdicted · novelty 7.0

VideoABC estimates video-LLM failure probability via low-dimensional attribute projection, dual quantization (k-means plus lattice), and psychophysics-inspired synthetic data.

InstrAct: Towards Action-Centric Understanding in Instructional Videos

cs.CV · 2026-04-09 · unverdicted · novelty 7.0

InstrAction pretrains video foundation models using action-centric data filtering, hard negatives, an Action Perceiver module, DTW-Align, and Masked Action Modeling to reduce static bias and outperform prior models on a new InstrAct Bench for semantic, procedural, and retrieval tasks.

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Showing 13 of 13 citing papers after filters.

  • PoseBridge: Bridging the Skeletonization Gap for Zero-Shot Skeleton-Based Action Recognition cs.CV · 2026-05-12 · unverdicted · none · ref 12 · internal anchor

    PoseBridge recovers semantic information lost during skeletonization by extracting pose-anchored cues from human pose estimation and transferring them via skeleton-conditioned bridging and semantic prototype adaptation, yielding 13.3-17.4 point gains on the Kinetics PURLS benchmark.

  • Overcoming Catastrophic Forgetting in Visual Continual Learning with Reinforcement Fine-Tuning cs.CV · 2026-05-10 · unverdicted · none · ref 60 · internal anchor

    RaPO reduces catastrophic forgetting in visual continual learning by shaping rewards around policy drift and stabilizing advantages with cross-task exponential moving averages during reinforcement fine-tuning of multimodal models.

  • SignMAE: Segmentation-Driven Self-Supervised Learning for Sign Language Recognition cs.CV · 2026-05-03 · unverdicted · none · ref 13 · internal anchor

    SignMAE uses segmentation-driven masking in a mask-and-reconstruct self-supervised task to learn fine-grained sign representations, achieving state-of-the-art accuracy on WLASL, NMFs-CSL, and Slovo with fewer frames and modalities.

  • MLVU: Benchmarking Multi-task Long Video Understanding cs.CV · 2024-06-06 · conditional · none · ref 18 · internal anchor

    MLVU is a new benchmark for long video understanding that uses extended videos across diverse genres and multi-task evaluations, revealing that current MLLMs struggle significantly and degrade sharply with longer durations.

  • Video Diffusion Models cs.CV · 2022-04-07 · unverdicted · none · ref 27 · internal anchor

    A diffusion model for video generation extends image architectures with joint image-video training and improved conditional sampling, delivering first large-scale text-to-video results and state-of-the-art performance on video prediction and unconditional generation benchmarks.

  • Bridging Brain and Semantics: A Hierarchical Framework for Semantically Enhanced fMRI-to-Video Reconstruction cs.CV · 2026-05-14 · unverdicted · none · ref 42 · internal anchor

    CineNeuron improves fMRI-to-video reconstruction by combining bottom-up semantic enrichment with top-down Mixture-of-Memories integration and outperforms prior methods on benchmarks.

  • HumanNet: Scaling Human-centric Video Learning to One Million Hours cs.CV · 2026-05-07 · unverdicted · none · ref 20 · internal anchor

    HumanNet is a 1M-hour human-centric video dataset with interaction annotations that enables better vision-language-action model performance than equivalent robot data in a controlled test.

  • Exploring High-Order Self-Similarity for Video Understanding cs.CV · 2026-04-22 · unverdicted · none · ref 31 · internal anchor

    The MOSS module learns and combines multi-order space-time self-similarity features to enhance temporal dynamics modeling in videos across action recognition, VQA, and robotic tasks.

  • Latent-Compressed Variational Autoencoder for Video Diffusion Models cs.CV · 2026-04-12 · unverdicted · none · ref 21 · internal anchor

    A frequency-based latent compression method for video VAEs yields higher reconstruction quality than channel-reduction baselines at fixed compression ratios.

  • Skyra: AI-Generated Video Detection via Grounded Artifact Reasoning cs.CV · 2025-12-17 · unverdicted · none · ref 28 · internal anchor

    Skyra is an MLLM that detects AI-generated videos by identifying and reasoning over grounded visual artifacts, supported by a new annotated dataset and benchmark.

  • Perception Encoder: The best visual embeddings are not at the output of the network cs.CV · 2025-04-17 · unverdicted · none · ref 55 · internal anchor

    Intermediate layers of a contrastively trained vision-language encoder yield stronger general embeddings than the output layer, enabling state-of-the-art performance across image/video classification, multimodal QA, and dense prediction after simple alignment.

  • Video Generation with Predictive Latents cs.CV · 2026-05-04 · unverdicted · none · ref 21 · internal anchor

    PV-VAE improves video latent spaces for generation by unifying reconstruction with future-frame prediction, reporting 52% faster convergence and 34.42 FVD gain over Wan2.2 VAE on UCF101.

  • A Comprehensive Survey of Action Quality Assessment: Method and Benchmark cs.CV · 2024-12-15 · unverdicted · none · ref 122 · internal anchor

    This survey proposes a modality-driven hierarchical taxonomy for AQA methods, establishes a unified benchmark for video-based approaches across datasets, and outlines research trends and challenges.