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Vers un système de capture du mouvement humain en 3D pour un robot mobile évoluant dans un environnement encombré

机译:面向在拥挤环境中运行的移动机器人的3D人体运动捕获系统

摘要

In this thesis we are interested in designing a mobile robot able to analyze the behavior and movement of a a person in indoor and cluttered environment. Our goal is to equip the robot by visual perception capabilities of the human posture to better analyze situations that require understanding of person with which the robot interacts, or detect risk situations such as falls or analyze motor skills of the person. Motion capture in a dynamic and crowded environment raises multiple challenges such as learning the background of the environment and extracting the silhouette that can be partially observable when the person is in hidden places. These difficulties make motion capture difficult. Most of existing methods assume that the scene is static and the person is always fully visible by the camera. These approaches are not able to work in such realitsit conditions. In this thesis, We propose a new motion capture system capable of tracking a person in realistic world conditions. Our approach uses a 3D occupancy grid with a hidden Markov model to continuously learn the changing background of the scene and to extract silhouette of the person, then a hierarchical particle filtering algorithm is used to reconstruct the posture. We propose a novel occlusion management algorithm able to identify and discards hidden body parts of the person from process of the pose estimation. We also proposed a new database containing RGBD images with ground truth data in order to establish a new benchmark for the assessment of motion capture systems in a real environment with occlusions. The ground truth is obtained from a motion capture system based on high-precision marker with eight infrared cameras. All data is available online. The second contribution of this thesis is the development of a new visual odometry method to localize an RGB-D camera mounted on a robot moving in a dynamic environment. The major difficulty of the localization in a dynamic environment, is that mobile objects in the scene induce additional movement that generates outliers pixels. These pixels should be excluded from the camera motion estimation process in order to produce accurate and precise localization. We thus propose an extension of the dense localization method based on the optical flow method to remove outliers pixels using the RANSAC algorithm.
机译:在本文中,我们对设计一种能够分析室内和混乱环境中的人的行为和运动的移动机器人感兴趣。我们的目标是通过人类姿势的视觉感知能力来装备机器人,以更好地分析需要了解与机器人进行交互的人的情况,或者检测诸如跌倒之类的风险情况或分析人的运动技能。在动态和拥挤的环境中进行运动捕捉带来了许多挑战,例如学习环境背景并提取当人处于隐藏位置时可以部分观察到的轮廓。这些困难使运动捕捉变得困难。现有的大多数方法都假定场景是静态的,并且摄像机始终可以完全看到人。这些方法无法在这种现实条件下工作。在本文中,我们提出了一种新的运动捕捉系统,该系统能够在现实世界中跟踪人。我们的方法使用带有隐马尔可夫模型的3D占用网格来连续学习场景的变化背景并提取人的轮廓,然后使用分层粒子滤波算法来重构姿势。我们提出了一种新颖的遮挡管理算法,该算法能够从姿势估计过程中识别并丢弃人的隐藏身体部位。我们还提出了一个包含RGBD图像和地面真实数据的新数据库,以便为评估具有遮挡的真实环境中的运动捕捉系统建立新的基准。地面真相是从具有八个红外摄像头的基于高精度标记的运动捕获系统获得的。所有数据均可在线获得。本文的第二个贡献是开发了一种新的视觉测距方法,以定位安装在动态环境中移动的机器人上的RGB-D摄像机。在动态环境中进行本地化的主要困难在于,场景中的移动对象会引发额外的运动,从而产生离群值像素。这些像素应从相机运动估计过程中排除,以产生准确和精确的定位。因此,我们提出了一种扩展的基于光流方法的密集定位方法,以使用RANSAC算法去除异常像素。

著录项

  • 作者

    Dib Abdallah;

  • 作者单位
  • 年度 2016
  • 总页数
  • 原文格式 PDF
  • 正文语种 fr
  • 中图分类

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