ROCVMar 15, 2017

Real-time 3D Human Tracking for Mobile Robots with Multisensors

arXiv:1703.04877v125 citations
Originality Incremental advance
AI Analysis

This addresses the problem of reliable human tracking for robots in applications like home service and navigation, but it is incremental as it builds on existing sensor fusion methods.

The paper tackles real-time 3D human tracking for mobile robots by combining a monocular camera and ultrasonic sensor with an extended Kalman filter, achieving superior accuracy and robustness in indoor and outdoor tests.

Acquiring the accurate 3-D position of a target person around a robot provides fundamental and valuable information that is applicable to a wide range of robotic tasks, including home service, navigation and entertainment. This paper presents a real-time robotic 3-D human tracking system which combines a monocular camera with an ultrasonic sensor by the extended Kalman filter (EKF). The proposed system consists of three sub-modules: monocular camera sensor tracking model, ultrasonic sensor tracking model and multi-sensor fusion. An improved visual tracking algorithm is presented to provide partial location estimation (2-D). The algorithm is designed to overcome severe occlusions, scale variation, target missing and achieve robust re-detection. The scale accuracy is further enhanced by the estimated 3-D information. An ultrasonic sensor array is employed to provide the range information from the target person to the robot and Gaussian Process Regression is used for partial location estimation (2-D). EKF is adopted to sequentially process multiple, heterogeneous measurements arriving in an asynchronous order from the vision sensor and the ultrasonic sensor separately. In the experiments, the proposed tracking system is tested in both simulation platform and actual mobile robot for various indoor and outdoor scenes. The experimental results show the superior performance of the 3-D tracking system in terms of both the accuracy and robustness.

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