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 251275 of 1322 papers

TitleStatusHype
Evaluating Spiking Neural Network On Neuromorphic Platform For Human Activity RecognitionCode0
Explaining Human Activity Recognition with SHAP: Validating Insights with Perturbation and Quantitative MeasuresCode0
Ensemble diverse hypotheses and knowledge distillation for unsupervised cross-subject adaptationCode0
Action Recognition in Video Sequences using Deep Bi-Directional LSTM With CNN FeaturesCode0
A Probabilistic Logic Programming Event CalculusCode0
Accurate Passive Radar via an Uncertainty-Aware Fusion of Wi-Fi Sensing DataCode0
Enhanced Spatio- Temporal Image Encoding for Online Human Activity RecognitionCode0
Eidetic 3D LSTM: A Model for Video Prediction and BeyondCode0
Action Recognition for Privacy-Preserving Ambient Assisted LivingCode0
Attention-Refined Unrolling for Sparse Sequential micro-Doppler ReconstructionCode0
Enhancing Wearable Tap Water Audio Detection through Subclass Annotation in the HD-Epic DatasetCode0
Exploring Video-Based Driver Activity Recognition under Noisy LabelsCode0
Generalized Relevance Learning Grassmann QuantizationCode0
Approaches to human activity recognition via passive radarCode0
Dynamic Vision Sensors for Human Activity RecognitionCode0
DYSAN: Dynamically sanitizing motion sensor data against sensitive inferences through adversarial networksCode0
Domain Adaptation with Representation Learning and Nonlinear Relation for Time SeriesCode0
Domain Adaptation Under Behavioral and Temporal Shifts for Natural Time Series Mobile Activity RecognitionCode0
Easy Ensemble: Simple Deep Ensemble Learning for Sensor-Based Human Activity RecognitionCode0
Distributed Online Learning of Event DefinitionsCode0
Discriminatively Learned Hierarchical Rank Pooling NetworksCode0
DiTMoS: Delving into Diverse Tiny-Model Selection on MicrocontrollersCode0
Differentially Private Integrated Decision Gradients (IDG-DP) for Radar-based Human Activity RecognitionCode0
Defending Black-box Skeleton-based Human Activity ClassifiersCode0
Directional Antenna Systems for Long-Range Through-Wall Human Activity RecognitionCode0
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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