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 12511275 of 1322 papers

TitleStatusHype
Decoding Human Activities: Analyzing Wearable Accelerometer and Gyroscope Data for Activity Recognition0
Decoupled Prompt-Adapter Tuning for Continual Activity Recognition0
Deep Action- and Context-Aware Sequence Learning for Activity Recognition and Anticipation0
Deep Activity Recognition Models with Triaxial Accelerometers0
Deep Adaptive Temporal Pooling for Activity Recognition0
Deep Adversarial Learning with Activity-Based User Discrimination Task for Human Activity Recognition0
Deep Auto-Set: A Deep Auto-Encoder-Set Network for Activity Recognition Using Wearables0
Deep, Convolutional, and Recurrent Models for Human Activity Recognition using Wearables0
DeepCount: Crowd Counting with WiFi via Deep Learning0
Deep Generative Domain Adaptation with Temporal Relation Knowledge for Cross-User Activity Recognition0
Deep Generative Domain Adaptation with Temporal Attention for Cross-User Activity Recognition0
Deep Learning for Computer Vision based Activity Recognition and Fall Detection of the Elderly: a Systematic Review0
Deep Learning for Sensor-based Human Activity Recognition: Overview, Challenges and Opportunities0
Deep Learning in Human Activity Recognition with Wearable Sensors: A Review on Advances0
Deep Positive Unlabeled Learning with a Sequential Bias0
Deep Recurrent Neural Network for Mobile Human Activity Recognition with High Throughput0
Deep Structured Models For Group Activity Recognition0
Deep Transfer Learning for Cross-domain Activity Recognition0
Deep Transfer Learning with Graph Neural Network for Sensor-Based Human Activity Recognition0
Post-train Black-box Defense via Bayesian Boundary Correction0
Dense Optical Flow Estimation Using Sparse Regularizers from Reduced Measurements0
Description of Structural Biases and Associated Data in Sensor-Rich Environments0
Design and Analysis of Efficient Attention in Transformers for Social Group Activity Recognition0
DeSPITE: Exploring Contrastive Deep Skeleton-Pointcloud-IMU-Text Embeddings for Advanced Point Cloud Human Activity Understanding0
Detecting Falls with X-Factor Hidden Markov Models0
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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