Human Action Recognition (HAR) for CCTV-oriented applications is still a challenging problem. Real-world scenarios HAR implementations is difficult because of the gap between Deep Learning data requirements and what the CCTV-based frameworks can offer in terms of data recording equipments. We propose to reduce this gap by exploiting human poses provided by the OpenPose, which has been already proven to be an effective detector in CCTV-like recordings for tracking applications. Therefore, in this work, we first propose ActionXPose: a novel 2D pose-based approach for pose-level HAR. ActionXPose extracts low- and high-level features from body poses which are provided to a Long Short-Term Memory Neural Network and a 1D Convolutional Neural Netw...
In vision-based human activity analysis, human pose estimation is an important study area. The goal ...
Computer vision and artificial intelligence aim to give computers a high-level understanding of imag...
Convolutional neural networks have recently shown proficiency atrecognizing actions in RGB video. Ex...
MPOSE2021 MPOSE2021 is a Dataset for short-time pose-based Human Action Recognition (HAR). MPOSE202...
This repository contains the MPOSE2021 Dataset for short-time pose-based Human Action Recognition (H...
Recognizing human actions is a core challenge for autonomous systems as they directly share the same...
We present four contributions to visual surveillance: (a) an action recognition method based on the ...
Human detection and pose estimation are essential components for any artificial system responsive to...
Sensor-based Human Activity Recognition facilitates unobtrusive monitoring of human movements. Howev...
Human action recognition (HAR) has gained significant attention recently as it can be adopted for a ...
We propose Human Pose Models that represent RGB and depth images of human poses independent of cloth...
Altres ajuts: Avanza I+D ViCoMo (TSI-020400-2009-133) and DiCoMa (TSI-020400-2011-55)We present a no...
Human Action Recognition (HAR) is a branch of computer vision that deals with the identification of ...
In vision-based human activity analysis, human pose estimation is an important study area. The goal ...
We propose to combine recent Convolutional Neural Networks (CNN) models with depth imaging to obtain...
In vision-based human activity analysis, human pose estimation is an important study area. The goal ...
Computer vision and artificial intelligence aim to give computers a high-level understanding of imag...
Convolutional neural networks have recently shown proficiency atrecognizing actions in RGB video. Ex...
MPOSE2021 MPOSE2021 is a Dataset for short-time pose-based Human Action Recognition (HAR). MPOSE202...
This repository contains the MPOSE2021 Dataset for short-time pose-based Human Action Recognition (H...
Recognizing human actions is a core challenge for autonomous systems as they directly share the same...
We present four contributions to visual surveillance: (a) an action recognition method based on the ...
Human detection and pose estimation are essential components for any artificial system responsive to...
Sensor-based Human Activity Recognition facilitates unobtrusive monitoring of human movements. Howev...
Human action recognition (HAR) has gained significant attention recently as it can be adopted for a ...
We propose Human Pose Models that represent RGB and depth images of human poses independent of cloth...
Altres ajuts: Avanza I+D ViCoMo (TSI-020400-2009-133) and DiCoMa (TSI-020400-2011-55)We present a no...
Human Action Recognition (HAR) is a branch of computer vision that deals with the identification of ...
In vision-based human activity analysis, human pose estimation is an important study area. The goal ...
We propose to combine recent Convolutional Neural Networks (CNN) models with depth imaging to obtain...
In vision-based human activity analysis, human pose estimation is an important study area. The goal ...
Computer vision and artificial intelligence aim to give computers a high-level understanding of imag...
Convolutional neural networks have recently shown proficiency atrecognizing actions in RGB video. Ex...