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Temporal Conditional Random Fields: A conditional state space predictor for visual tracking

机译:时间条件随机场:用于视觉跟踪的条件状态空间预测器

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We present a modified Temporal Conditional Random Fields framework for modeling and predicting object motion. To facilitate such a powerful graphical model with prediction and come up with a CRF-based predictor, we propose a set of new temporal relations for object tracking, with feature functions such as optical flow (calculated among consequent frames). We evaluate our proposed Temporal Conditional Random Field method with real and synthetic data sequences and will show that the TCRF prediction is nearly equivalent with result of template matching. Experimental results show that our proposed method estimates future target state with zero error until target dynamic changes. Our proposed modified CRF method with simple and easy to implement feature functions, can learn any target dynamic, thus, it can predict next state of target with zero error.
机译:我们提出了一种改进的时间条件随机场框架,用于建模和预测对象运动。为了促进具有预测功能的强大图形模型并提出基于CRF的预测器,我们提出了一组用于对象跟踪的新时间关系,并具有诸如光流(在后续帧之间计算)之类的功能。我们用真实的和合成的数据序列评估我们提出的时间条件随机场方法,并且将显示TCRF预测与模板匹配的结果几乎相等。实验结果表明,本文提出的方法估计了目标状态的零误差,直到目标动态变化为止。我们提出的改进的CRF方法具有简单易实现的特征函数,可以学习任何目标动态,从而可以预测目标的下一状态,且误差为零。

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