Human motion prediction aims to forecast future human poses given a sequence of past 3D skeletons. While this problem has recently received increasing attention, it has mostly been tackled for single humans in isolation. In this paper we explore this problem from a novel perspective, involving humans performing collaborative tasks. We assume that the input of our system are two sequences of past skeletons for two interacting persons, and we aim to predict the future motion for each of them. For this purpose, we devise a novel cross interaction attention mechanism that exploits historical information of both persons and learns to predict cross dependencies between self poses and the poses of the other person in spite of their spatial or temp...
We present a novel method for multiple people tracking that leverages a generalized model for captur...
Human action can be recognised from a single still im-age by modelling Human-object interaction (HOI...
We propose a method for detecting dyadic interactions: fine-grained, coordinated interactions betwee...
CVPR 2022, update results of MSR in Table 3International audienceHuman motion prediction aims to for...
Joint forecasting of human trajectory and pose dynamics is a fundamental building block of various a...
Human motion prediction is one of the key problems in computer vision and robotic vision and has rec...
La compréhension de la pose et du mouvement des humains dans l'espace tri-dimensionnel a connu d'éno...
In recent times, the field of computer vision has made great progress with recognizing and tracking ...
© 2019 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
Despite the great progress in human motion prediction, it remains a challenging task due to the comp...
We introduce a novel spatio-temporal deformable part model for offline detection of fine-grained int...
To coordinate actions with an interaction partner requires a constant exchange of sensorimotor signa...
We introduce a novel spatiotemporal deformable part model for the localization of fine-grained human...
In this work, we present MotionMixer, an efficient 3D human body pose forecasting model based solely...
Humans are the central subjects to be studied in a computer vision system. In particular, the abilit...
We present a novel method for multiple people tracking that leverages a generalized model for captur...
Human action can be recognised from a single still im-age by modelling Human-object interaction (HOI...
We propose a method for detecting dyadic interactions: fine-grained, coordinated interactions betwee...
CVPR 2022, update results of MSR in Table 3International audienceHuman motion prediction aims to for...
Joint forecasting of human trajectory and pose dynamics is a fundamental building block of various a...
Human motion prediction is one of the key problems in computer vision and robotic vision and has rec...
La compréhension de la pose et du mouvement des humains dans l'espace tri-dimensionnel a connu d'éno...
In recent times, the field of computer vision has made great progress with recognizing and tracking ...
© 2019 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
Despite the great progress in human motion prediction, it remains a challenging task due to the comp...
We introduce a novel spatio-temporal deformable part model for offline detection of fine-grained int...
To coordinate actions with an interaction partner requires a constant exchange of sensorimotor signa...
We introduce a novel spatiotemporal deformable part model for the localization of fine-grained human...
In this work, we present MotionMixer, an efficient 3D human body pose forecasting model based solely...
Humans are the central subjects to be studied in a computer vision system. In particular, the abilit...
We present a novel method for multiple people tracking that leverages a generalized model for captur...
Human action can be recognised from a single still im-age by modelling Human-object interaction (HOI...
We propose a method for detecting dyadic interactions: fine-grained, coordinated interactions betwee...