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Robust visual tracking based on simplified biologically inspired features

机译:基于简化的生物学启发功能的强大视觉跟踪

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We address the problem of robust appearance-based visual tracking. First, a set of simplified biologically inspired features (SBIF) is proposed for object representation and the Bhattacharyya coefficient is used to measure the similarity between the target model and candidate targets. Then, the proposed appearance model is combined into a Bayesian state inference tracking framework utilizing the SIR (sampling importance resampling) particle filter to propagate sample distributions over time. Numerous experiments are conducted and experimental results demonstrate that our algorithm is robust to partial occlusions and variations of illumination and pose, resistant to nearby distractors, as well as possesses the state-of-the-art tracking accuracy.
机译:我们解决了基于外观的强大视觉跟踪问题。首先,提出了一组简化的生物学启发特征(SBIF)用于对象表示,并且Bhattacharyya系数用于测量目标模型与候选目标之间的相似性。然后,利用SIR(采样重要性重采样)粒子滤波器将提出的外观模型组合到贝叶斯状态推断跟踪框架中,以随时间传播样本分布。进行了大量的实验,实验结果表明,我们的算法对于部分遮挡以及光照和姿势的变化具有鲁棒性,可以抵抗附近的干扰物,并且具有最新的跟踪精度。

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