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Visual Inertial Odometry Sensor Fusion Approach for Autonomous Localization

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DataCite Commons2021-04-30 更新2025-04-16 收录
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https://ieee-dataport.org/documents/visual-inertial-odometry-sensor-fusion-approach-autonomous-localization
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This paper describes a sensor fusion technique to localize autonomously unmanned vehicles. In particular, we performed a sensor fusion based on the extended Kalman filter between two commercial sensors. The adopted sensors are ZED2 and Intel T265, respectively; these platforms already perform visual-inertial odometry in their integrated system-on-chip. Since these 2 devices represent the top of the range on the market to make an autonomous localization, this study aims to analyze and inform about results that can be obtained by performing a sensor fusion between the two cameras. Several tests on a specific trajectory and environment demonstrated that a more robust autonomous localization than one of the single cameras can be obtained by properly tuning parameters and inputs of the Extended Kalman filter.
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IEEE DataPort
创建时间:
2021-04-30
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