SOTAVerified

Action Recognition

Action Recognition is a computer vision task that involves recognizing human actions in videos or images. The goal is to classify and categorize the actions being performed in the video or image into a predefined set of action classes.

In the video domain, it is an open question whether training an action classification network on a sufficiently large dataset, will give a similar boost in performance when applied to a different temporal task or dataset. The challenges of building video datasets has meant that most popular benchmarks for action recognition are small, having on the order of 10k videos.

Please note some benchmarks may be located in the Action Classification or Video Classification tasks, e.g. Kinetics-400.

Papers

Showing 12511275 of 2759 papers

TitleStatusHype
Image-based human re-identification: Which covariates are actually (the most) important?0
Interact Before Align: Leveraging Cross-Modal Knowledge for Domain Adaptive Action Recognition0
Interaction Part Mining: A Mid-Level Approach for Fine-Grained Action Recognition0
DEEPEYE: A Compact and Accurate Video Comprehension at Terminal Devices Compressed with Quantization and Tensorization0
Data-Folding and Hyperspace Coding for Multi-Dimensonal Time-Series Data Imaging0
Interactive Generation of Laparoscopic Videos with Diffusion Models0
Interactive Prototype Learning for Egocentric Action Recognition0
Image and Video Mining through Online Learning0
A Study on Differentiable Logic and LLMs for EPIC-KITCHENS-100 Unsupervised Domain Adaptation Challenge for Action Recognition 20230
InternVid: A Large-scale Video-Text Dataset for Multimodal Understanding and Generation0
Learning Action Recognition Model From Depth and Skeleton Videos0
Data Collection-free Masked Video Modeling0
Deep Image-to-Video Adaptation and Fusion Networks for Action Recognition0
Interpretable Action Recognition on Hard to Classify Actions0
Interpretable Deep Feature Propagation for Early Action Recognition0
Interpretable Spatio-temporal Attention for Video Action Recognition0
In the Eye of Beholder: Joint Learning of Gaze and Actions in First Person Video0
In the Eye of the Beholder: Gaze and Actions in First Person Video0
Intra- and Inter-Action Understanding via Temporal Action Parsing0
Invariant 3D Shape Recognition using Predictive Modular Neural Networks0
Invariant recognition drives neural representations of action sequences0
Deep Learning Computer Vision Algorithms for Real-time UAVs On-board Camera Image Processing0
Investigation on Combining 3D Convolution of Image Data and Optical Flow to Generate Temporal Action Proposals0
Invisible-to-Visible: Privacy-Aware Human Instance Segmentation using Airborne Ultrasound via Collaborative Learning Variational Autoencoder0
IIP-Transformer: Intra-Inter-Part Transformer for Skeleton-Based Action Recognition0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1MViTv2-B (IN-21K + Kinetics400 pretrain)Top-5 Accuracy93.4Unverified
2RSANet-R50 (8+16 frames, ImageNet pretrained, 2 clips)Top-5 Accuracy91.1Unverified
3MVD (Kinetics400 pretrain, ViT-H, 16 frame)Top-1 Accuracy77.3Unverified
4InternVideoTop-1 Accuracy77.2Unverified
5DejaVidTop-1 Accuracy77.2Unverified
6InternVideo2-1BTop-1 Accuracy77.1Unverified
7VideoMAE V2-gTop-1 Accuracy77Unverified
8MVD (Kinetics400 pretrain, ViT-L, 16 frame)Top-1 Accuracy76.7Unverified
9Hiera-L (no extra data)Top-1 Accuracy76.5Unverified
10TubeViT-LTop-1 Accuracy76.1Unverified
#ModelMetricClaimedVerifiedStatus
1FTP-UniFormerV2-L/143-fold Accuracy99.7Unverified
2OmniVec23-fold Accuracy99.6Unverified
3OmniVec3-fold Accuracy99.6Unverified
4VideoMAE V2-g3-fold Accuracy99.6Unverified
5BIKE3-fold Accuracy98.8Unverified
6SMART3-fold Accuracy98.64Unverified
7ZeroI2V ViT-L/143-fold Accuracy98.6Unverified
8OmniSource (SlowOnly-8x8-R101-RGB + I3D-Flow)3-fold Accuracy98.6Unverified
9PERF-Net (multi-distilled S3D)3-fold Accuracy98.6Unverified
10Text4Vis3-fold Accuracy98.2Unverified