基于半监督极限学习的目标跟踪方法

Shuqi Qiu, Jianye Zhang, Song Qing, Junling Dong, Wenbin Guo
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引用次数: 1

摘要

提出了一种基于半监督极限学习机的运动目标跟踪方法,将运动目标跟踪转化为二分类问题,解决了运动目标跟踪场景遮挡和运动目标变形容易导致运动目标丢失的问题。首先,对目标区域进行采样,建立基于半监督极限的学习机网络训练集;其次,通过学习训练建立判别模型,定位最优运动目标;同时,引入运动对象的相似比例和更新阈值来判断半监督极限学习机网络模型,通过更新推理是否能提高模型的预测精度。与其他六种目标跟踪方法相比,本文算法在仿真实验中大大改善了中心定位误差(CLE),能够准确定位运动目标,速度满足实时性要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Object Tracking Method Based on Semi Supervised Extreme Learning
A moving object tracking method based on semi supervised extreme learning machine is proposed, which transforms the moving object tracking into a dichotomous problem, to solve the problem that the moving object tracking scene is occluded and the moving object is deformed and can easily lead to the loss of the moving object. Firstly, the semi-supervised limit-based learning machine network training set is established by sampling the object area. Secondly, the discriminant model is set up by learning training to locate the optimal moving object. At the same time, the similarity proportion and update threshold of the moving object are introduced to judge whether the semi supervised extreme learning machine network model, with updated reasoning can improve the prediction accuracy of the model. Compared with the other six target tracking methods, the proposed algorithm can greatly improve the center location error (CLE) in the simulation experiment, and can accurately locate the moving object and the speed can meet the real-time requirements.
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