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A Method of Adaptive Learning Rate Tracking for Embedded Device Based Correlation Surface Evalution

机译:基于嵌入式的相关表面评估的自适应学习速率跟踪方法

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The Accuracy of correlation filtering trackers have got great improvement because of using high dimension features,but its real-time performance became worsen. And we often have the meet of running tracker on embedding device, inthis case, we need less calculation. It is all known that the model updating strategy is also important for trackingperformance. The fixed learning rate model updating strategy is difficult to deal with the situation that the object changesrapidly or slowly. For the problem, a new correlation surface quality evaluation metric is proposed in this paper.Meanwhile, we consider the occlusion of the object, and propose the occlusion judgment algorithm. Finally, the learningrate of model is updated adaptively according to the change speed of the object and whether the object is occluded. Wefurther conduct experiment on the OTB50 dataset. Experimental results show that the correlation tracker with grayfeature can improve the tracking accuracy by about 3% compared with MOSSE tracker, after adopting the learning rateadaptive strategy proposed in this paper and maintain high speed on embedding device.
机译:相关滤波跟踪器的准确性由于使用高尺寸特征而有很大的改进,但它的实时表现变得恶化。我们经常在嵌入设备上进行运行跟踪器的会面,这种情况,我们需要较少的计算。众所周知,模型更新策略对于跟踪也很重要表现。固定学习率模型更新策略难以处理对象变化的情况快速或缓慢。出于问题,本文提出了一种新的相关表面质量评估度量。同时,我们考虑对象的闭塞,并提出遮挡判断算法。最后,学习根据对象的变化速度,模型的速率是自适应更新的,以及对象是否被遮挡。我们进一步对OTB50数据集进行实验。实验结果表明,带灰色的相关跟踪器在采用学习率之后,功能可以通过Mosse跟踪器提高跟踪精度约3%本文提出的自适应策略,并在嵌入装置上保持高速。

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