4.7 Article

Motion estimation from image and inertial measurements

Journal

INTERNATIONAL JOURNAL OF ROBOTICS RESEARCH
Volume 23, Issue 12, Pages 1157-1195

Publisher

SAGE PUBLICATIONS LTD
DOI: 10.1177/0278364904045593

Keywords

batch shape-from-motion, recursive shape-from-motion; inertial navigation; omnidirectional vision; sensor fusion; long-term motion estimation

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Cameras and inertial sensors are each good candidates for antonomous vehicle navigation, modeling from video, and other applications that require six-degrees-of-freedom motion estimation. However these sensors are also good candidates to be deployed together, since each can be used to resolve the ambiguities in estimated motion that result from using the other modality alone. In this paper, we consider the specific problem of estimating sensor motion and other unknowns from image, gyro, and accelerometer measurements, in environments without known fiducials. This paper targets applications where external positions references such as global positioning are not available, and,focuses on the use of small and inexpensive inertial sensors, for applications where weight and cost requirements preclude the use of precision inertial navigation systems. We present two algorithms,for estimating sensor motion from image and inertial measurements. The first algorithm is a batch method, which produces estimates of the sensor motion, scene structure, and other unknowns using measurements from the entire observation sequence simultaneously The second algorithm recovers sensor motion, scene structure, and other parameters recursively, and is suitable for use with long or infinite sequences, in which no feature is always visible. We evaluate the accuracy of the algorithms and their sensitivity to their estimation parameters using a sequence of four experiments. These experiments focus on cases where estimates front image or inertial measurements alone are poor, on the relative advantage of using inertial measurements and onmidirectional images, and on long sequences in which the percentage of the image sequence in which individual features are visible is low.

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