论文标题
适用于无人机对象跟踪的稀疏正规化相关滤波
Sparse Regularized Correlation Filter for UAV Object Tracking with adaptive Contextual Learning and Keyfilter Selection
论文作者
论文摘要
最近,由于其高框架速率,稳健性和低计算资源,相关过滤器已被广泛应用于无人机(UAV)的跟踪。但是,由于两个固有的缺陷,即边界效应和滤波器损坏是脆弱的。通过扩大搜索区域的某些方法可以减轻边界效应,但引入了不希望的背景干扰器。另一种方法可以通过引入时间正规化器来减轻学习过滤器的时间变性,这取决于以下假设:连续帧之间的归档器应该是连贯的。实际上,有时第($ t-1 $)框架的申报者容易受到背景的重闭,这导致假设不存在。为了处理它们,在这项工作中,我们提出了一个新颖的$ \ ell_ {1} $正则化相关过滤器,具有自适应上下文学习和无人用的关键滤镜选择。首先,我们通过使用先前的相关滤波器模型生成的当前帧响应图上的局部最大值的分布来自适应检测有效上下文干扰物的位置。接下来,我们通过在每个干扰器上删除一个标签并为每个干扰器开发新的分数方案来消除跟踪目标的不一致标签。然后,我们可以从过滤器池中选择关键滤波器,从当前帧处的目标与与滤波器池中每个过滤器相对应的目标模板之间的最大相似性。最后,在三个权威无人机数据集上进行的定量和定性实验表明,所提出的方法优于基于相关滤波器框架的最新跟踪方法。
Recently, correlation filter has been widely applied in unmanned aerial vehicle (UAV) tracking due to its high frame rates, robustness and low calculation resources. However, it is fragile because of two inherent defects, i.e, boundary effect and filter corruption. Some methods by enlarging the search area can mitigate the boundary effect, yet introducing the undesired background distractors. Another approaches can alleviate the temporal degeneration of learned filters by introducing the temporal regularizer, which depends on the assumption that the filers between consecutive frames should be coherent. In fact, sometimes the filers at the ($t-1$)th frame is vulnerable to heavy occlusion from backgrounds, which causes that the assumption does not hold. To handle them, in this work, we propose a novel $\ell_{1}$ regularization correlation filter with adaptive contextual learning and keyfilter selection for UAV tracking. Firstly, we adaptively detect the positions of effective contextual distractors by the aid of the distribution of local maximum values on the response map of current frame which is generated by using the previous correlation filter model. Next, we eliminate inconsistent labels for the tracked target by removing one on each distractor and develop a new score scheme for each distractor. Then, we can select the keyfilter from the filters pool by finding the maximal similarity between the target at the current frame and the target template corresponding to each filter in the filters pool. Finally, quantitative and qualitative experiments on three authoritative UAV datasets show that the proposed method is superior to the state-of-the-art tracking methods based on correlation filter framework.