Stereo vision is a growing topic in computer vision due to the innumerable opportunities and applications this technology offers for the development of modern solutions, such as virtual and augmented reality applications. To enhance the user's experience in three-dimensional virtual environments, the motion parallax estimation is a promising technique to achieve this objective. In this paper, we propose an algorithm for generating parallax motion effects from a single image, taking advantage of state-of-the-art instance segmentation and depth estimation approaches. This work also presents a comparison against such algorithms to investigate the trade-off between efficiency and quality of the parallax motion effects, taking into consideration...
Estimating the 3D structure of the drivable surface and surrounding environment is a crucial task fo...
Perception of depth is a fundamental challenge for the visual system, particularly for observers mov...
Motion parallax is widely regarded as providing metric depth information that is equal or superior t...
Estimating the distance to objects is crucial for autonomous vehicles, but cost, weight or power con...
The paper presents a method for the simulation of motion parallax for monitor-based Augmented Realit...
Binocular disparity and motion parallax are the most important cues for depth estimation in human an...
Relative retinal image motion from active observer movement in the environment, often called motion ...
The Ken Burns effect allows animating still images with a virtual camera scan and zoom. Adding paral...
Binocular disparity is the main depth cue that makes stereoscopic images appear 3D. However, in many...
Estimating motion in scenes containing multiple motions remains a difficult problem for computer vis...
International audienceComplementary advances in the fields of virtual reality (VR) and reality captu...
International audienceThe selection and manipulation of 3D content in desktop virtual environments i...
3D representation nowadays has attracted much more public attention than ever before. One of the mos...
image Figure 1: Given a segmented image as input we produce a stereo pair (or a motion parallax anim...
The principal objective of this thesis is to develop improved motion estimation and segmentation tec...
Estimating the 3D structure of the drivable surface and surrounding environment is a crucial task fo...
Perception of depth is a fundamental challenge for the visual system, particularly for observers mov...
Motion parallax is widely regarded as providing metric depth information that is equal or superior t...
Estimating the distance to objects is crucial for autonomous vehicles, but cost, weight or power con...
The paper presents a method for the simulation of motion parallax for monitor-based Augmented Realit...
Binocular disparity and motion parallax are the most important cues for depth estimation in human an...
Relative retinal image motion from active observer movement in the environment, often called motion ...
The Ken Burns effect allows animating still images with a virtual camera scan and zoom. Adding paral...
Binocular disparity is the main depth cue that makes stereoscopic images appear 3D. However, in many...
Estimating motion in scenes containing multiple motions remains a difficult problem for computer vis...
International audienceComplementary advances in the fields of virtual reality (VR) and reality captu...
International audienceThe selection and manipulation of 3D content in desktop virtual environments i...
3D representation nowadays has attracted much more public attention than ever before. One of the mos...
image Figure 1: Given a segmented image as input we produce a stereo pair (or a motion parallax anim...
The principal objective of this thesis is to develop improved motion estimation and segmentation tec...
Estimating the 3D structure of the drivable surface and surrounding environment is a crucial task fo...
Perception of depth is a fundamental challenge for the visual system, particularly for observers mov...
Motion parallax is widely regarded as providing metric depth information that is equal or superior t...