Our work addresses long-term motion context issues for predicting future frames. To predict the future precisely, it is required to capture which long-term motion context (e.g., walking or running) the input motion (e.g., leg movement) belongs to. The bottlenecks arising when dealing with the long-term motion context are: (i) how to predict the long-term motion context naturally matching input sequences with limited dynamics, (ii) how to predict the long-term motion context with high-dimensionality (e.g., complex motion). To address the issues, we propose novel motion context-aware video prediction. To solve the bottleneck (i), we introduce a long-term motion context memory (LMC-Memory) with memory alignment learning. The proposed memory al...
Human motion prediction is one of the key problems in computer vision and robotic vision and has rec...
Motion-compensating long-term memory prediction extends the spatial displacement utilized in block-b...
Motion-compensating long-term memory prediction ex-tends the spatial dislplacement utilized in block...
The use of recurrent neural networks in several applications has allowed to capture impressive resul...
International audienceRecently, video prediction algorithms based on neural networks have become a p...
The objective of this paper is a temporal alignment network that ingests long term video sequences, ...
Predicting future frames in videos has become a promising direction of research for both computer vi...
Action prediction based on video is an important problem in computer vision field with many applicat...
While recent deep learning methods have made significant progress on the video prediction problem, m...
Long-term memory prediction extends motion compensation from the previous frame to several past fram...
Transformers have recently been popular for learning and inference in the spatial-temporal domain. H...
Human actions captured in video sequences contain two crucial factors for action recognition, i.e., ...
Video prediction refers to predicting and generating future video frames given a set of consecutive ...
Abstract—Long-term memory motion-compensated prediction extends the spatial displacement vector util...
Analyzing and understanding human actions in long-range videos has promising applications, such as v...
Human motion prediction is one of the key problems in computer vision and robotic vision and has rec...
Motion-compensating long-term memory prediction extends the spatial displacement utilized in block-b...
Motion-compensating long-term memory prediction ex-tends the spatial dislplacement utilized in block...
The use of recurrent neural networks in several applications has allowed to capture impressive resul...
International audienceRecently, video prediction algorithms based on neural networks have become a p...
The objective of this paper is a temporal alignment network that ingests long term video sequences, ...
Predicting future frames in videos has become a promising direction of research for both computer vi...
Action prediction based on video is an important problem in computer vision field with many applicat...
While recent deep learning methods have made significant progress on the video prediction problem, m...
Long-term memory prediction extends motion compensation from the previous frame to several past fram...
Transformers have recently been popular for learning and inference in the spatial-temporal domain. H...
Human actions captured in video sequences contain two crucial factors for action recognition, i.e., ...
Video prediction refers to predicting and generating future video frames given a set of consecutive ...
Abstract—Long-term memory motion-compensated prediction extends the spatial displacement vector util...
Analyzing and understanding human actions in long-range videos has promising applications, such as v...
Human motion prediction is one of the key problems in computer vision and robotic vision and has rec...
Motion-compensating long-term memory prediction extends the spatial displacement utilized in block-b...
Motion-compensating long-term memory prediction ex-tends the spatial dislplacement utilized in block...