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A Classification-Lock Tracking Strategy Allowing a Person-Following Robot to Operate in a Complicated Indoor Environment

机译:分类锁定跟踪策略允许跟随人员的机器人在复杂的室内环境中操作

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摘要

Person-following technology is an important robot service. The major trend of person-following is to utilize computer vision technology to localize the target person, due to the wide view and rich information that is obtained from the real world through a camera. However, most existing approaches employ the detecting-by-tracking strategy, which suffers from low speed, accompanied with more complicated detecting models and unstable region of interest (ROI) outputs in unexpressed situations. In this paper, we propose a novel classification-lock strategy to localize the target person, which incorporates the visual tracking technology with object detection technology, to adapt the localization model to different environments online, and to keep a high frame-per-second (FPS) on the mobile platform. This person-following approach consists of three key parts. In the first step, a pairwise cluster tracker is employed to localize the person. A positive and negative classifier is then utilized to verify the tracker’s result and to update the tracking model. In addition, a detector pre-trained by a CPU-optimized convolutional neural network is used to further improve the result of tracking. In the experiment, our approach is compared with other state-of-art approaches by a Vojir tracking dataset, with three sequences in the items of human to prove the quality of person localization. Moreover, the common challenges during the following task are evaluated by several image sequences in a static scene, and a dynamic scene is used to evaluate the improvement from the classification-lock strategy. Finally, our approach is deployed on a mobile robot to test its performance on the function of the person-following. Compared with other state-of-art methods, our approach achieves the highest score (0.91 recall rate). In the static and dynamic scene, the output of the ROI based on the classification-lock strategy is significantly better than that without it. Our approach also succeeds in a long-term following task in an indoor multi-floor scenario.
机译:后续技术是一项重要的机器人服务。跟进人员的主要趋势是利用计算机视觉技术对目标人员进行定位,这是因为它通过摄像机从现实世界中获得了广阔的视野和丰富的信息。但是,大多数现有方法采用跟踪检测策略,该策略速度较慢,并且在未表达的情况下伴随着更复杂的检测模型和不稳定的目标区域(ROI)输出。在本文中,我们提出了一种新颖的分类锁定策略来对目标人进行定位,该策略将视觉跟踪技术与对象检测技术相结合,以使定位模型在线适应不同的环境,并保持较高的每秒帧数( FPS)。该人员跟踪方法包括三个关键部分。第一步,采用成对的集群追踪器来定位人。然后,使用正负分类器来验证跟踪器的结果并更新跟踪模型。此外,使用经过CPU优化的卷积神经网络预训练的检测器可进一步改善跟踪结果。在实验中,我们的方法通过Vojir跟踪数据集与其他最新方法进行了比较,该数据集在人的项中具有三个序列,以证明人的定位质量。此外,通过静态场景中的多个图像序列评估后续任务中的常见挑战,并使用动态场景评估分类锁定策略的改进。最后,我们的方法部署在移动机器人上,以测试其在以下人员功能方面的性能。与其他最新方法相比,我们的方法得分最高(0.91的查全率)。在静态和动态场景中,基于分类锁定策略的ROI的输出明显优于没有分类锁定策略的ROI。在室内多层场景中,我们的方法还可以成功完成长期的后续任务。

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