Yao Gang, Dani Ashwin
Department of Electrical and Computer Engineering, University of Connecticut Storrs, CT, United States.
Front Robot AI. 2018 Aug 22;5:95. doi: 10.3389/frobt.2018.00095. eCollection 2018.
An efficient iterative Earth Mover's Distance (iEMD) algorithm for visual tracking is proposed in this paper. The Earth Mover's Distance (EMD) is used as the similarity measure to search for the optimal template candidates in feature-spatial space in a video sequence. The local sparse representation is used as the appearance model for the iEMD tracker. The maximum-alignment-pooling method is used for constructing a sparse coding histogram which reduces the computational complexity of the EMD optimization. The template update algorithm based on the EMD is also presented. When the camera is mounted on a moving robot, e.g., a flying quadcopter, the camera could experience a sudden and rapid motion leading to large inter-frame movements. To ensure that the tracking algorithm converges, a gyro-aided extension of the iEMD tracker is presented, where synchronized gyroscope information is utilized to compensate for the rotation of the camera. The iEMD algorithm's performance is evaluated using eight publicly available videos from the CVPR 2013 dataset. The performance of the iEMD algorithm is compared with eight state-of-the-art tracking algorithms based on relative percentage overlap. Experimental results show that the iEMD algorithm performs robustly in the presence of illumination variation and deformation. The robustness of this algorithm for large inter-frame displacements is also illustrated.
本文提出了一种用于视觉跟踪的高效迭代推土机距离(iEMD)算法。推土机距离(EMD)被用作相似性度量,以在视频序列的特征空间中搜索最优模板候选。局部稀疏表示被用作iEMD跟踪器的外观模型。最大对齐池化方法用于构建稀疏编码直方图,降低了EMD优化的计算复杂度。还提出了基于EMD的模板更新算法。当相机安装在移动机器人上,例如飞行的四旋翼飞行器时,相机可能会经历突然且快速的运动,导致帧间运动较大。为确保跟踪算法收敛,提出了iEMD跟踪器的陀螺辅助扩展,其中利用同步的陀螺仪信息来补偿相机的旋转。使用来自CVPR 2013数据集的八个公开可用视频对iEMD算法的性能进行评估。基于相对百分比重叠,将iEMD算法的性能与八种最先进的跟踪算法进行比较。实验结果表明,iEMD算法在存在光照变化和变形的情况下表现稳健。还展示了该算法对大帧间位移的鲁棒性。