International audienceWe propose a learning-based approach for motion boundary detection. Precise localization of motion boundaries is essential for the success of optical flow estimation, as motion boundaries correspond to discontinuities of the optical flow field. The proposed approach allows to predict motion boundaries, using a structured random forest trained on the ground-truth of the MPI-Sintel dataset. The random forest leverages several cues at the patch level, namely appearance (RGB color) and motion cues (optical flow estimated by state-of-the-art algorithms). Experimental results show that the proposed approach is both robust and computationally efficient. It significantly outperforms state-of-the-art motion-difference approache...
Applies mean field technique and presents a deterministic algorithm to determine the optical flow an...
In moving camera videos, motion segmentation is com-monly performed using the image plane motion of ...
In the general structure-from-motion (SFM) problem involving several moving objects in a scene, the ...
International audienceWe propose a learning-based approach for motion boundary detection. Precise lo...
© © The Institution of Engineering and Technology 2020 This study proposes a three-stream model usin...
Unsupervised optical flow estimators based on deep learning have attracted increasing attention due ...
International audienceThe problem of determining whether an object is in motion, irrespective of cam...
In this work, we propose a contour and region detector for video data that exploits motion cues and ...
Motion boundary extraction and optical flow computation are two subproblems of the motion recovery p...
A significant barrier to applying the techniques of machine learning to the domain of object boundar...
While great strides have been made in detecting and localizing specific objects in natural images, t...
The segmentation of motion in an image sequence is an important task in many computer vision applica...
This thesis shows how to detect boundaries on the basis of motion information alone. The detection...
Optic flow is an important cue for object detection. Humans are able to ...
In this thesis, we employ optical flow features for the detection of the rigid or non‐rigid single o...
Applies mean field technique and presents a deterministic algorithm to determine the optical flow an...
In moving camera videos, motion segmentation is com-monly performed using the image plane motion of ...
In the general structure-from-motion (SFM) problem involving several moving objects in a scene, the ...
International audienceWe propose a learning-based approach for motion boundary detection. Precise lo...
© © The Institution of Engineering and Technology 2020 This study proposes a three-stream model usin...
Unsupervised optical flow estimators based on deep learning have attracted increasing attention due ...
International audienceThe problem of determining whether an object is in motion, irrespective of cam...
In this work, we propose a contour and region detector for video data that exploits motion cues and ...
Motion boundary extraction and optical flow computation are two subproblems of the motion recovery p...
A significant barrier to applying the techniques of machine learning to the domain of object boundar...
While great strides have been made in detecting and localizing specific objects in natural images, t...
The segmentation of motion in an image sequence is an important task in many computer vision applica...
This thesis shows how to detect boundaries on the basis of motion information alone. The detection...
Optic flow is an important cue for object detection. Humans are able to ...
In this thesis, we employ optical flow features for the detection of the rigid or non‐rigid single o...
Applies mean field technique and presents a deterministic algorithm to determine the optical flow an...
In moving camera videos, motion segmentation is com-monly performed using the image plane motion of ...
In the general structure-from-motion (SFM) problem involving several moving objects in a scene, the ...