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 11511175 of 1322 papers

TitleStatusHype
Activity and Subject Detection for UCI HAR Dataset with & without missing Sensor DataCode0
Resolution-Adaptive Micro-Doppler Spectrogram for Human Activity RecognitionCode0
Weak-Annotation of HAR Datasets using Vision Foundation ModelsCode0
Hang-Time HAR: A Benchmark Dataset for Basketball Activity Recognition using Wrist-Worn Inertial SensorsCode0
Subject Cross Validation in Human Activity RecognitionCode0
FedAli: Personalized Federated Learning with Aligned Prototypes through Optimal TransportCode0
Super Low Resolution RF Powered Accelerometers for Alerting on Hospitalized Patient Bed ExitsCode0
Hard Regularization to Prevent Deep Online Clustering Collapse without Data AugmentationCode0
Feature engineering workflow for activity recognition from synchronized inertial measurement unitsCode0
Exploring Video-Based Driver Activity Recognition under Noisy LabelsCode0
Defending Black-box Skeleton-based Human Activity ClassifiersCode0
HARMamba: Efficient and Lightweight Wearable Sensor Human Activity Recognition Based on Bidirectional MambaCode0
Chirality Nets for Human Pose RegressionCode0
Cadence: A Practical Time-series Partitioning Algorithm for Unlabeled IoT Sensor StreamsCode0
ATARS: An Aerial Traffic Atomic Activity Recognition and Temporal Segmentation DatasetCode0
MEx: Multi-modal Exercises Dataset for Human Activity RecognitionCode0
RHM: Robot House Multi-view Human Activity Recognition DatasetCode0
MIFI: MultI-camera Feature Integration for Roust 3D Distracted Driver Activity RecognitionCode0
Explaining Human Activity Recognition with SHAP: Validating Insights with Perturbation and Quantitative MeasuresCode0
Hierarchical Attentive Recurrent TrackingCode0
Hierarchical Deep Temporal Models for Group Activity RecognitionCode0
Hierarchical Relational Networks for Group Activity Recognition and RetrievalCode0
Evaluating Spiking Neural Network On Neuromorphic Platform For Human Activity RecognitionCode0
Hierarchical Temporal Convolution Network:Towards Privacy-Centric Activity RecognitionCode0
Deep Residual Bidir-LSTM for Human Activity Recognition Using Wearable SensorsCode0
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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