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首页> 外文期刊>IEICE transactions on information and systems >Drift-Free Tracking Surveillance Based on Online Latent Structured SVM and Kalman Filter Modules
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Drift-Free Tracking Surveillance Based on Online Latent Structured SVM and Kalman Filter Modules

机译:基于在线潜在结构化支持向量机和卡尔曼滤波模块的无漂移跟踪监视

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Tracking-by-detection methods consider tracking task as a continuous detection problem applied over video frames. Modern tracking-by-detection trackers have online learning ability; the update stage is essential because it determines how to modify the classifier inherent in a tracker. However, most trackers search for the target within a fixed region centered at the previous object position; thus, they lack spatiotemporal consistency. This becomes a problem when the tracker detects an incorrect object during short-term occlusion. In addition, the scale of the bounding box that contains the target object is usually assumed not to change. This assumption is unrealistic for long-term tracking, where the scale of the target varies as the distance between the target and the camera changes. The accumulation of errors resulting from these shortcomings results in the drift problem, i.e. drifting away from the target object. To resolve this problem, we present a drift-free, online learning-based tracking-by-detection method using a single static camera. We improve the latent structured support vector machine (SVM) tracker by designing a more robust tracker update step by incorporating two Kalman filter modules: the first is used to predict an adaptive search region in consideration of the object motion; the second is used to adjust the scale of the bounding box by accounting for the background model. We propose a hierarchical search strategy that combines Bhattacharyya coefficient similarity analysis and Kalman predictors. This strategy facilitates overcoming occlusion and increases tracking efficiency. We evaluate this work using publicly available videos thoroughly. Experimental results show that the proposed method outperforms the state-of-the-art trackers.
机译:按检测跟踪的方法将跟踪任务视为应用于视频帧的连续检测问题。现代的按检测跟踪的跟踪器具有在线学习能力;更新阶段至关重要,因为它决定了如何修改跟踪器中固有的分类器。但是,大多数跟踪器都在以先前对象位置为中心的固定区域内搜索目标。因此,它们缺乏时空一致性。当跟踪器在短期遮挡期间检测到不正确的对象时,这将成为问题。另外,通常假定包含目标对象的边界框的比例不变。这种假设对于长期跟踪是不现实的,长期跟踪中目标的比例会随着目标与相机之间的距离的变化而变化。由这些缺点导致的误差的累积导致漂移问题,即,漂移离开目标物体。为了解决此问题,我们提出了一种使用单个静态相机的无漂移,基于在线学习的检测跟踪方法。我们通过结合两个卡尔曼滤波器模块来设计更健壮的跟踪器更新步骤,从而改进了潜在结构化支持向量机(SVM)跟踪器:第一个用于考虑对象运动来预测自适应搜索区域;第二个用于通过考虑背景模型来调整边界框的比例。我们提出了一种结合了Bhattacharyya系数相似性分析和Kalman预测因子的分层搜索策略。该策略有助于克服阻塞并提高跟踪效率。我们会使用公开的视频全面评估这项工作。实验结果表明,所提出的方法优于最新的跟踪器。

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