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RGB-D Sensor Based SLAM and Human Tracking with Bayesian Framework for Wheelchair Robots

机译:基于RGB-D传感器与贝叶斯机器人贝叶斯框架的SLAM和人为跟踪

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In this paper, we present an approach to visual SLAM and human tracking for a wheelchair robot equipped with a Microsoft Kinect sensor that which is a novel sensing system that captures RGB and depth (RGB-D) images simultaneously. The speeded-up robust feature (SURF) algorithm is employed to provide the robust description of feature for environments and the target person from RGB images. Based on the environmental SURF features, we present the natural landmark based simultaneous localization and mapping with the extended Kalman filter suing RGB-D data. Meanwhile, a depth clustering based human detection is proposed to extract human candidates. Accordantly, the target person tracking is achieved with an online learned RGB-D appearance model by integrating histogram orientation of gradient descriptor, color, depth, and position information from the body of the identified caregiver. Moreover, a fuzzy based controller provides dynamical human following for the wheelchair robot with a desired interval. Consequently, the experimental results demonstrated the effectiveness and feasibility in real world environments.
机译:在本文中,我们介绍了一种用于携带Microsoft Kinect传感器的轮椅机器人的视觉SLAM和人类跟踪,该机器人是一种新颖的感应系统,它同时捕获RGB和深度(RGB-D)图像。采用加速强度特征(冲浪)算法来提供来自RGB图像的环境和目标人的特征的稳健描述。基于环境冲浪功能,我们介绍了基于天然的地标同时定位和映射,使用延长的卡尔曼滤波器起诉RGB-D数据。同时,提出了基于深度聚类的人体检测,以提取人类候选者。抱歉,通过将梯度描述符,颜色,深度和位置信息的直方图取向集成来自所识别的照顾者的主体的直方图取向来实现目标人物跟踪。此外,基于模糊的控制器为具有所需间隔的轮椅机器人提供动态人。因此,实验结果表明了现实世界环境中的有效性和可行性。

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