In the last years, convolutional neural network (CNN) based methods are becoming more and more popular to estimate optical flow. Recently, state-of-the art optical flow methods often use multiple frames to make use of temporal information. However, a prediction based on previous frames was not studied separately from the flow estimation for CNN based learning approaches. In this thesis various network structures are tested, compared and improved for this task. The best results were obtained by using warped backward and forward flows from two previous frames. It was shown that in this setting even a simple linear CNN structure produces better results than a prediction based on the reversed backward flow
Optical flow estimation is one of the main subjects in computer vision. Many methods developed to co...
Optical flow is used to describe the variations between adjacent images of a sequence. Although the ...
In this paper, the authors present information processing strategies, derived from neurobiology, whi...
In this work, we derive a variational method for optical flow estimation based on convolutional neur...
Convolutional neural networks (CNNs) have recently been very successful in a variety of computer vis...
Dense motion estimations obtained from optical flow techniques play a significant role in many image...
End-to-end trained convolutional neural networks have led to a breakthrough in optical flow estimati...
International audienceIn the last few years there has been a growing interest in approaches that all...
Recent work has shown that optical flow estimation can be formulated as a supervised learning proble...
In this paper, two novel and practical regularizing methods are proposed to improve existing neural ...
International audienceSpherical cameras and the latest image processing techniques open up new horiz...
The cellular neural network is a locally interconnected neural network capable of high-speed computa...
State-of-the-art neural network models estimate large displacement optical flow in multi-resolution ...
We introduce a Convolutional Neural Network (CNN) that is specifically designed and trained to post-...
Optical flow estimation, i.e. the prediction of motion in an image sequence, is an essential problem...
Optical flow estimation is one of the main subjects in computer vision. Many methods developed to co...
Optical flow is used to describe the variations between adjacent images of a sequence. Although the ...
In this paper, the authors present information processing strategies, derived from neurobiology, whi...
In this work, we derive a variational method for optical flow estimation based on convolutional neur...
Convolutional neural networks (CNNs) have recently been very successful in a variety of computer vis...
Dense motion estimations obtained from optical flow techniques play a significant role in many image...
End-to-end trained convolutional neural networks have led to a breakthrough in optical flow estimati...
International audienceIn the last few years there has been a growing interest in approaches that all...
Recent work has shown that optical flow estimation can be formulated as a supervised learning proble...
In this paper, two novel and practical regularizing methods are proposed to improve existing neural ...
International audienceSpherical cameras and the latest image processing techniques open up new horiz...
The cellular neural network is a locally interconnected neural network capable of high-speed computa...
State-of-the-art neural network models estimate large displacement optical flow in multi-resolution ...
We introduce a Convolutional Neural Network (CNN) that is specifically designed and trained to post-...
Optical flow estimation, i.e. the prediction of motion in an image sequence, is an essential problem...
Optical flow estimation is one of the main subjects in computer vision. Many methods developed to co...
Optical flow is used to describe the variations between adjacent images of a sequence. Although the ...
In this paper, the authors present information processing strategies, derived from neurobiology, whi...