SOTAVerified

Activity Recognition

Human Activity Recognition is the problem of identifying events performed by humans given a video input. It is formulated as a binary (or multiclass) classification problem of outputting activity class labels. Activity Recognition is an important problem with many societal applications including smart surveillance, video search/retrieval, intelligent robots, and other monitoring systems.

Source: Learning Latent Sub-events in Activity Videos Using Temporal Attention Filters

Papers

Showing 501525 of 1322 papers

TitleStatusHype
Graph Neural Network based Child Activity Recognition0
Deep Learning for Inertial Sensor Alignment0
OpenPack: A Large-scale Dataset for Recognizing Packaging Works in IoT-enabled Logistic Environments0
Towards Stroke Patients' Upper-limb Automatic Motor Assessment Using Smartwatches0
Automated Level Crossing System: A Computer Vision Based Approach with Raspberry Pi Microcontroller0
Self-Supervised PPG Representation Learning Shows High Inter-Subject VariabilityCode1
DroneAttention: Sparse Weighted Temporal Attention for Drone-Camera Based Activity Recognition0
Day2Dark: Pseudo-Supervised Activity Recognition beyond Silent Daylight0
Applications of human activity recognition in industrial processes -- Synergy of human and technology0
Recognition and Prediction of Surgical Gestures and Trajectories Using Transformer Models in Robot-Assisted Surgery0
Video-based Pose-Estimation Data as Source for Transfer Learning in Human Activity Recognition0
Gated Recurrent Neural Networks with Weighted Time-Delay Feedback0
MOMA-LRG: Language-Refined Graphs for Multi-Object Multi-Actor Activity ParsingCode1
Distribution estimation and change-point estimation for time series via DNN-based GANs0
SWL-Adapt: An Unsupervised Domain Adaptation Model with Sample Weight Learning for Cross-User Wearable Human Activity RecognitionCode1
Understanding the Vulnerability of Skeleton-based Human Activity Recognition via Black-box AttackCode1
HARDVS: Revisiting Human Activity Recognition with Dynamic Vision SensorsCode3
Wearable-based Human Activity Recognition with Spatio-Temporal Spiking Neural NetworksCode1
PriMask: Cascadable and Collusion-Resilient Data Masking for Mobile Cloud InferenceCode0
Investigating Enhancements to Contrastive Predictive Coding for Human Activity RecognitionCode0
SWTF: Sparse Weighted Temporal Fusion for Drone-Based Activity Recognition0
Unsupervised Deep Learning-based clustering for Human Activity RecognitionCode0
Heterogeneous Hidden Markov Models for Sleep Activity Recognition from Multi-Source Passively Sensed Data0
Multi-Stage Based Feature Fusion of Multi-Modal Data for Human Activity Recognition0
XAI-BayesHAR: A novel Framework for Human Activity Recognition with Integrated Uncertainty and Shapely Values0
Show:102550
← PrevPage 21 of 53Next →

Benchmark Results

#ModelMetricClaimedVerifiedStatus
1Structured Keypoint PoolingAccuracy93.4Unverified
2Semi-Supervised Hard Attention (SSHA); pretrained on Deepmind Kinetics datasetAccuracy90.4Unverified
3Human Skeletons + Change DetectionAccuracy90.25Unverified
4Separable Convolutional LSTMAccuracy89.75Unverified
5SPIL ConvolutionAccuracy89.3Unverified
6Flow Gated NetworkAccuracy87.25Unverified
#ModelMetricClaimedVerifiedStatus
1FocusCLIPTop-3 Accuracy (%)10.47Unverified
2CLIPTop-3 Accuracy (%)6.49Unverified
#ModelMetricClaimedVerifiedStatus
1Boutaleb et al.1:1 Accuracy97.91Unverified
#ModelMetricClaimedVerifiedStatus
1all-landmark-modelActivity Recognition0.76Unverified