Electrical Engineering Department, Wah Engineering College, University of Wah, Wah Cantt 47040, Pakistan.
Department of Electrical Engineering, The Ibadat International University, Islamabad 54590, Pakistan.
Sensors (Basel). 2022 Jan 31;22(3):1098. doi: 10.3390/s22031098.
Tracking moving objects is one of the most promising yet the most challenging research areas pertaining to computer vision, pattern recognition and image processing. The challenges associated with object tracking range from problems pertaining to camera axis orientations to object occlusion. In addition, variations in remote scene environments add to the difficulties related to object tracking. All the mentioned challenges and problems pertaining to object tracking make the procedure computationally complex and time-consuming. In this paper, a stochastic gradient-based optimization technique has been used in conjunction with particle filters for object tracking. First, the object that needs to be tracked is detected using the Maximum Average Correlation Height (MACH) filter. The object of interest is detected based on the presence of a correlation peak and average similarity measure. The results of object detection are fed to the tracking routine. The gradient descent technique is employed for object tracking and is used to optimize the particle filters. The gradient descent technique allows particles to converge quickly, allowing less time for the object to be tracked. The results of the proposed algorithm are compared with similar state-of-the-art tracking algorithms on five datasets that include both artificial moving objects and humans to show that the gradient-based tracking algorithm provides better results, both in terms of accuracy and speed.
跟踪移动目标是计算机视觉、模式识别和图像处理领域中最有前途但最具挑战性的研究领域之一。与目标跟踪相关的挑战包括与摄像机轴方向相关的问题到目标遮挡。此外,远程场景环境的变化也增加了与目标跟踪相关的难度。所有与目标跟踪相关的提到的挑战和问题使得该过程在计算上变得复杂且耗时。在本文中,一种基于随机梯度的优化技术与粒子滤波器结合用于目标跟踪。首先,使用最大平均相关高度(MACH)滤波器检测需要跟踪的目标。根据相关峰和平均相似度度量的存在来检测感兴趣的目标。目标检测的结果被馈送到跟踪例程。使用梯度下降技术进行目标跟踪,并用于优化粒子滤波器。梯度下降技术允许粒子快速收敛,从而减少了跟踪目标所需的时间。将所提出的算法的结果与包括人工移动目标和人类在内的五个数据集上的类似最先进的跟踪算法进行比较,以表明基于梯度的跟踪算法在准确性和速度方面都提供了更好的结果。