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Optical flow-based real-time object tracking using non-prior training active feature model

机译:使用非先验训练活动特征模型的基​​于光流的实时对象跟踪

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This paper presents a feature-based object tracking algorithm using optical flow under the non-prior training (NPT) active feature model (AFM) framework. The proposed tracking procedure can be divided into three steps: (ⅰ) localization of an object-of-interest, (ⅱ) prediction and correction of the object's position by utilizing spatio-temporal information, and (ⅲ) restoration of occlusion using NPT-AFM. The proposed algorithm can track both rigid and deformable objects, and is robust against the object's sudden motion because both a feature point and the corresponding motion direction are tracked at the same time. Tracking performance is not degraded even with complicated background because feature points inside an object are completely separated from background. Finally, the AFM enables stable tracking of occluded objects with maximum 60% occlusion. NPT-AFM, which is one of the major contributions of this paper, removes the off-line, preprocessing step for generating a priori training set. The training set used for model fitting can be updated at each frame to make more robust object's features under occluded situation. The proposed AFM can track deformable, partially occluded objects by using the greatly reduced number of feature points rather than taking entire shapes in the existing shape-based methods. The on-line updating of the training set and reducing the number of feature points can realize a real-time, robust tracking system. Experiments have been performed using several in-house video clips of a static camera including objects such as a robot moving on a floor and people walking both indoor and outdoor. In order to show the performance of the proposed tracking algorithm, some experiments have been performed under noisy and low-contrast environment. For more objective comparison, PETS 2001 and PETS 2002 datasets were also used.
机译:本文提出了一种在非先验训练(NPT)主动特征模型(AFM)框架下使用光流的基于特征的对象跟踪算法。拟议的跟踪程序可以分为三个步骤:(ⅰ)定位感兴趣的对象,(ⅱ)利用时空信息预测和校正对象的位置,以及(ⅲ)使用NPT-原子力显微镜。该算法既可以跟踪刚性对象也可以跟踪可变形对象,并且由于可以同时跟踪特征点和相应的运动方向,因此对对象的突然运动具有鲁棒性。即使对象复杂,跟踪性能也不会降低,因为对象内部的特征点与背景完全分离。最后,AFM能够以最大60%的遮挡率稳定地跟踪被遮挡的对象。 NPT-AFM是本文的主要贡献之一,它消除了用于生成先验训练集的离线预处理步骤。可以在每一帧更新用于模型拟合的训练集,以在被遮挡的情况下使对象的功能更强大。所提出的AFM可以通过使用数量大大减少的特征点来跟踪可变形的,部分被遮挡的对象,而不用采用现有的基于形状的方法来采用整个形状。训练集的在线更新和减少特征点的数量可以实现实时,鲁棒的跟踪系统。使用静态摄像机的多个内部视频剪辑进行了实验,其中包括诸如在地板上移动的机器人以及在室内和室外行走的人之类的物体。为了显示所提出的跟踪算法的性能,已经在嘈杂和低对比度的环境下进行了一些实验。为了更客观地进行比较,还使用了PETS 2001和PETS 2002数据集。

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