Guo Siqiu, Zhang Tao, Song Yulong, Qian Feng
Chinese Academy of Science, Changchun Institute of Optics Fine Mechanics and Physics, 3888 Dongnanhu Road, Changchun 130033, China.
University of Chinese Academy of Science, 19 Yuquan Road, Beijing 100049, China.
Sensors (Basel). 2018 Apr 23;18(4):1292. doi: 10.3390/s18041292.
This paper presents a particle swarm tracking algorithm with improved inertia weight based on color features. The weighted color histogram is used as the target feature to reduce the contribution of target edge pixels in the target feature, which makes the algorithm insensitive to the target non-rigid deformation, scale variation, and rotation. Meanwhile, the influence of partial obstruction on the description of target features is reduced. The particle swarm optimization algorithm can complete the multi-peak search, which can cope well with the object occlusion tracking problem. This means that the target is located precisely where the similarity function appears multi-peak. When the particle swarm optimization algorithm is applied to the object tracking, the inertia weight adjustment mechanism has some limitations. This paper presents an improved method. The concept of particle maturity is introduced to improve the inertia weight adjustment mechanism, which could adjust the inertia weight in time according to the different states of each particle in each generation. Experimental results show that our algorithm achieves state-of-the-art performance in a wide range of scenarios.
本文提出了一种基于颜色特征的改进惯性权重粒子群跟踪算法。加权颜色直方图用作目标特征,以减少目标边缘像素在目标特征中的贡献,这使得算法对目标的非刚性变形、尺度变化和旋转不敏感。同时,减少了部分遮挡对目标特征描述的影响。粒子群优化算法可以完成多峰搜索,能够很好地应对目标遮挡跟踪问题。这意味着目标精确位于相似性函数出现多峰的位置。当粒子群优化算法应用于目标跟踪时,惯性权重调整机制存在一些局限性。本文提出了一种改进方法。引入粒子成熟度概念来改进惯性权重调整机制,该机制可以根据每一代中每个粒子的不同状态及时调整惯性权重。实验结果表明,我们的算法在广泛的场景中实现了领先的性能。