首页> 外文会议>Intelligent Robots and Systems, 2003. (IROS 2003). Proceedings. 2003 IEEE/RSJ International Conference on >Real-time detection of moving objects in a dynamic scene from moving robotic vehicles
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Real-time detection of moving objects in a dynamic scene from moving robotic vehicles

机译:从移动的机器人车辆实时检测动态场景中的移动物体

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Dynamic scene perception is currently limited to detection of moving objects from a static platform or scenes with flat backgrounds. We discuss novel real-time methods to segment moving objects in the motion field formed by a moving camera/robotic platform with mostly translational motion. Our solution does not explicitly require any egomotion knowledge, thereby making the solution applicable to mobile outdoor robot problems where no IMU information is available. We address two problems in dynamic scene perception on the move, first using only 2D monocular grayscale images, and second where 3D range information from stereo is also available. Our solution involves real-time optical flow computations, followed by optical flow field preprocessing to highlight moving object boundaries. In the case where range data from stereo is computed, a 3D optical flow field is estimated by combining range information with 2D optical flow estimates, followed by a similar 3D flow field preprocessing step. A segmentation of the flow field using fast flood filling then identifies every moving object in the scene with a unique label. This novel algorithm is expected to be the critical first step in robust recognition of moving vehicles and people from mobile outdoor robots, and therefore offers a robust solution to the problem of dynamic scene perception in the presence of certain kinds of robot motion. It is envisioned that our algorithm will benefit robot scene perception in urban environments for scientific, commercial and defense applications. Results of our real-time algorithm on a mobile robot in a scene with a single moving vehicle are presented.
机译:当前,动态场景感知仅限于从静态平台检测运动对象或具有平坦背景的场景。我们讨论了新颖的实时方法来分割运动场中的运动对象,该运动场是由运动的相机/机器人平台(主要是平移运动)形成的。我们的解决方案不明确要求任何自我运动知识,因此使该解决方案适用于没有IMU信息的移动户外机器人问题。我们解决了移动中动态场景感知中的两个问题,首先是仅使用2D单眼灰度图像,其次是还可以使用来自立体声的3D范围信息。我们的解决方案涉及实时光流计算,然后进行光流场预处理以突出显示移动物体的边界。在计算来自立体的距离数据的情况下,通过将距离信息与2D光流估计值相结合,然后进行类似的3D流场预处理步骤,来估计3D光流场。然后使用快速洪水填充对流场进行分段,从而使用唯一的标签标识场景中的每个运动对象。这种新颖的算法有望成为从室外移动机器人中对移动的车辆和人员进行可靠识别的关键的第一步,因此,它为存在某些类型的机器人运动时的动态场景感知问题提供了一种鲁棒的解决方案。可以预见,对于科学,商业和国防应用,我们的算法将有益于城市环境中的机器人场景感知。展示了我们在具有单个移动车辆的场景中的移动机器人上的实时算法的结果。

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