This paper presents a novel method for visual-inertial odometry. The method is based on an information fusion framework employing low-cost IMU sensors and the monocular camera in a standard smartphone. We formulate a sequential inference scheme, where the IMU drives the dynamical model and the camera frames are used in coupling trailing sequences of augmented poses. The novelty in the model is in taking into account all the cross-terms in the updates, thus propagating the inter-connected uncertainties throughout the model. Stronger coupling between the inertial and visual data sources leads to robustness against occlusion and feature-poor environments. We demonstrate results on data collected with an iPhone and provide comparisons against t...
In this research we develop the next generation methods for inertial navigation, which seek to estim...
Data abstract: This Zenodo upload contains the ADVIO data for benchmarking and developing visual-ine...
We formulate estimation of metric velocity using a visually tracked point, accelerometer reading and...
Most of the mobile applications require efficient and precise compu-tation of the device pose, and a...
Most of the mobile applications require efficient and precise computation of the device pose, and al...
Building a complete inertial navigation system using the limited quality data provided by current sm...
Smartphones have become a part of everyday modern life. Their presence and capabilities have changed...
Nowadays visual and inertial information is readily available from small mobile platforms, such as q...
Accurate localization is essential in many applications such as robotics, unmanned aerial vehicles, ...
Deep learning approaches for Visual-Inertial Odometry (VIO) have proven successful, but they rarely ...
In this work, we focus on the problem of pose estimation in unknown environments, using the measurem...
Abstract — We propose a novel monocular visual inertial odometry algorithm that combines the advanta...
Autonomous vehicles require knowing their state in the environment to make a decision and achieve th...
Precise pose information is a fundamental prerequisite for numerous applications in robotics, AI and...
Data abstract: This Zenodo upload contains the ADVIO data for benchmarking and developing visual-ine...
In this research we develop the next generation methods for inertial navigation, which seek to estim...
Data abstract: This Zenodo upload contains the ADVIO data for benchmarking and developing visual-ine...
We formulate estimation of metric velocity using a visually tracked point, accelerometer reading and...
Most of the mobile applications require efficient and precise compu-tation of the device pose, and a...
Most of the mobile applications require efficient and precise computation of the device pose, and al...
Building a complete inertial navigation system using the limited quality data provided by current sm...
Smartphones have become a part of everyday modern life. Their presence and capabilities have changed...
Nowadays visual and inertial information is readily available from small mobile platforms, such as q...
Accurate localization is essential in many applications such as robotics, unmanned aerial vehicles, ...
Deep learning approaches for Visual-Inertial Odometry (VIO) have proven successful, but they rarely ...
In this work, we focus on the problem of pose estimation in unknown environments, using the measurem...
Abstract — We propose a novel monocular visual inertial odometry algorithm that combines the advanta...
Autonomous vehicles require knowing their state in the environment to make a decision and achieve th...
Precise pose information is a fundamental prerequisite for numerous applications in robotics, AI and...
Data abstract: This Zenodo upload contains the ADVIO data for benchmarking and developing visual-ine...
In this research we develop the next generation methods for inertial navigation, which seek to estim...
Data abstract: This Zenodo upload contains the ADVIO data for benchmarking and developing visual-ine...
We formulate estimation of metric velocity using a visually tracked point, accelerometer reading and...