Estimating scene depth, predicting camera motion and localizing dynamic objects from monocular videos are fundamental but challenging research topics in computer vision. Deep learning has demonstrated an amazing performance for these tasks recently. This article presents a novel unsupervised deep learning framework for scene depth estimation, camera motion prediction and dynamic object localization from videos. Consecutive stereo image pairs are used to train the system while only monocular images are needed for inference. The supervisory signals for the training stage come from various forms of image synthesis. Due to the use of consecutive stereo video, both spatial and temporal photometric errors are used to synthesize the images. Furthe...
Conventional self-supervised monocular depth prediction methods are based on a static environment as...
Human visual perception is a powerful tool to let us interact with the world, interpreting depth usi...
A significant weakness of most current deep Convolutional Neural Networks is the need to train them ...
Abstract(#br)Depth estimation from monocular video plays a crucial role in scene perception. The sig...
Depth estimation from monocular video plays a crucial role in scene perception. The significant draw...
Learning to predict scene depth from RGB inputs is a challenging task both for indoor and outdoor ro...
Funding Information: This work has been supported by a donation from Konecranes, Finnish Center for ...
We introduce a way to learn to estimate a scene representation from a single image by predicting a l...
Self-supervised monocular depth estimation enables robots to learn 3D perception from raw video stre...
International audienceWe propose a depth map inference system from monocular videos based on a novel...
Depth and ego-motion estimations are essential for the localization and navigation of autonomous rob...
Depth information is a vital component for perception of the 3D structure of vehicle's surroundings ...
Depth information is a vital component for perception of the 3D structure of vehicle's surroundings ...
Depth information is a vital component for perception of the 3D structure of vehicle's surroundings ...
This paper proposes a novel unsupervised learning framework for depth recovery and camera ego-motion...
Conventional self-supervised monocular depth prediction methods are based on a static environment as...
Human visual perception is a powerful tool to let us interact with the world, interpreting depth usi...
A significant weakness of most current deep Convolutional Neural Networks is the need to train them ...
Abstract(#br)Depth estimation from monocular video plays a crucial role in scene perception. The sig...
Depth estimation from monocular video plays a crucial role in scene perception. The significant draw...
Learning to predict scene depth from RGB inputs is a challenging task both for indoor and outdoor ro...
Funding Information: This work has been supported by a donation from Konecranes, Finnish Center for ...
We introduce a way to learn to estimate a scene representation from a single image by predicting a l...
Self-supervised monocular depth estimation enables robots to learn 3D perception from raw video stre...
International audienceWe propose a depth map inference system from monocular videos based on a novel...
Depth and ego-motion estimations are essential for the localization and navigation of autonomous rob...
Depth information is a vital component for perception of the 3D structure of vehicle's surroundings ...
Depth information is a vital component for perception of the 3D structure of vehicle's surroundings ...
Depth information is a vital component for perception of the 3D structure of vehicle's surroundings ...
This paper proposes a novel unsupervised learning framework for depth recovery and camera ego-motion...
Conventional self-supervised monocular depth prediction methods are based on a static environment as...
Human visual perception is a powerful tool to let us interact with the world, interpreting depth usi...
A significant weakness of most current deep Convolutional Neural Networks is the need to train them ...