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An Adaptive Kernel based Correlation Filter Algorithm for Real Time Object Tracking

机译:基于自适应核的相关滤波算法在实时目标跟踪中的应用

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We proposed an adaptive kernel based correlation filter algorithm (AKCF) for object tracking. The algorithm includes two filters: a translation filter and a scale filter. In our method, we classify objects into three categories: fast speed ones, middle speed ones, and low speed ones. To track an object with different speeds, a “padding” value varies accordingly for adjusting the searching area in the translation filter. After detecting an object, the two filters update their parameters for dealing with the appearance variations and scale changes. In the strategy, the response score in the second frame is remembered as a reference, and an updating range is determined. When the current response score is out of the updating range, the filters stop updating to avoid introducing more interference from background. Finally, the proposed method is evaluated on the OTB dataset. Contrary to other state-of-the-art approaches, our method has provided good performance to track an object with different speed and serious scale changes. Additionally, our method is computational efficient.
机译:我们提出了一种基于自适应核的相关滤波算法(AKCF),用于目标跟踪。该算法包括两个过滤器:平移过滤器和比例过滤器。在我们的方法中,我们将对象分为三类:高速对象,中速对象和低速对象。为了以不同的速度跟踪对象,“填充”值会相应变化,以调整翻译过滤器中的搜索区域。在检测到对象后,两个过滤器会更新其参数以处理外观变化和比例变化。在该策略中,将第二帧中的响应分数记为参考,并确定更新范围。当前响应分数超出更新范围时,过滤器将停止更新,以避免引入更多来自背景的干扰。最后,在OTB数据集上对提出的方法进行了评估。与其他最新方法相反,我们的方法提供了良好的性能,可以以不同的速度和严重的比例变化来跟踪对象。此外,我们的方法计算效率高。

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