This dissertation describes a deepening study about Visual Odometry problem tackled with transformer architectures. The existing VO algorithms are based on heavily hand-crafted features and are not able to generalize well to new environments. To train them, we need carefully fine-tune the hyper-parameters and the network architecture. We propose to tackle the VO problem with transformer because it is a general-purpose architecture and because it was designed to transformer sequences of data from a domain to another one, which is the case of the VO problem. Our first goal is to create synthetic dataset using BlenderProc2 framework to mitigate the problem of the dataset scarcity. The second goal is to tackle the VO problem by using differen...
Visual odometry has become an important tool given the new popularity of mobile robotics. Camera pos...
Abstract Transformers were initially introduced for natural language processing (NLP) tasks, but fas...
This paper studies monocular visual odometry (VO) problem. Most of existing VO algorithms are develo...
A lot of recent works have shown that deep learning-based visual odometry methods outperform existin...
The accuracy of pose estimation from feature-based Visual Odometry (VO) algorithms is affected by se...
Visual odometry (VO) is the process of estimating the motion of an object, with the input informatio...
Monocular visual odometry consists of the estimation of the position of an agent through images of a...
The ability to estimate egomotion is at the heart of safe and reliable mobile autonomy. By inferring...
The author presents a study based on Visual Odometry (VO) for navigation ofautonomous vehicles. This...
Abstract Transformers, the dominant architecture for natural language processing, have also recently...
Anticipating pedestrian crossing behavior in urban scenarios is a challenging task for autonomous ve...
Recently, transformer architecture has gained great success in the computer vision community, such a...
The development of autonomous driving systems has been one of the most popular research areas in the...
In the fields of VR, AR, and autonomous driving, it is critical to track the accurate location of an...
This paper presents a new model for multi-object tracking (MOT) with a transformer. MOT is a spatiot...
Visual odometry has become an important tool given the new popularity of mobile robotics. Camera pos...
Abstract Transformers were initially introduced for natural language processing (NLP) tasks, but fas...
This paper studies monocular visual odometry (VO) problem. Most of existing VO algorithms are develo...
A lot of recent works have shown that deep learning-based visual odometry methods outperform existin...
The accuracy of pose estimation from feature-based Visual Odometry (VO) algorithms is affected by se...
Visual odometry (VO) is the process of estimating the motion of an object, with the input informatio...
Monocular visual odometry consists of the estimation of the position of an agent through images of a...
The ability to estimate egomotion is at the heart of safe and reliable mobile autonomy. By inferring...
The author presents a study based on Visual Odometry (VO) for navigation ofautonomous vehicles. This...
Abstract Transformers, the dominant architecture for natural language processing, have also recently...
Anticipating pedestrian crossing behavior in urban scenarios is a challenging task for autonomous ve...
Recently, transformer architecture has gained great success in the computer vision community, such a...
The development of autonomous driving systems has been one of the most popular research areas in the...
In the fields of VR, AR, and autonomous driving, it is critical to track the accurate location of an...
This paper presents a new model for multi-object tracking (MOT) with a transformer. MOT is a spatiot...
Visual odometry has become an important tool given the new popularity of mobile robotics. Camera pos...
Abstract Transformers were initially introduced for natural language processing (NLP) tasks, but fas...
This paper studies monocular visual odometry (VO) problem. Most of existing VO algorithms are develo...