首页> 外文期刊>International Journal of Artificial Intelligence Tools: Architectures, Languages, Algorithms >Online Object Tracking via Novel Adaptive Multicue Based Particle Filter Framework for Video Surveillance
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Online Object Tracking via Novel Adaptive Multicue Based Particle Filter Framework for Video Surveillance

机译:通过新型自适应多样基于多种基于多种粒子滤波器框架的在线对象跟踪用于视频监控

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摘要

Multicue based object tracking frameworks have been extensively explored due to their numerous applications in the field of computer vision. However, the online adaptive fusion of multicue under scale and illumination variations, partial or full occlusion, background clutters and object deformation remains an open challenge problem. In order to address this, we propose an online visual tracking algorithm using adaptive integration of multicue in a particle filter framework. The particle level fusion process is modelled as Shafer’s model with a power set defined over two focal elements. Partial conflicting masses and conjunctive consensus among three cues are estimated for each evaluated particle. Partial conflicts among cues are redistributed using Dezert-Smarandache Theory (DSmT) based proportional conflict redistribution rules (PCR-6). Additionally, context sensitive transductive cues reliabilities are used for discounting the particle likelihoods for quick adaptation of tracker. In the proposed model, automatic boosting of good particles and suppression of low performing particles not only improves resampling process but also enhances tracker accuracy. Experimental validation over benchmarked video sequences reveals that the proposed multicue tracking framework outperforms state-of-the-art trackers under various dynamic environmental challenges.
机译:由于计算机愿景领域的许多应用程序,已经广泛探索了基于的对象跟踪框架。然而,在规模和照明变化的在线自适应融合,部分或完全遮挡,背景夹斗和物体变形仍然是开放的挑战问题。为了解决这个问题,我们提出了一种在粒子滤波器框架中的自适应集成的在线视觉跟踪算法。粒子水平融合过程被建模为Shafer模型,其中功率集在两个焦点元件上定义。每个评估的粒子估计三个线索中的部分冲突群众和联合共识。使用Dezert-Smarandache理论(DSMT)的比例冲突再分配规则(PCR-6)重新分配CUES之间的部分冲突。此外,上下文敏感的转换性提示可靠性用于折扣用于快速适应跟踪器的粒子可能性。在所提出的模型中,良好颗粒的自动提升和低性能粒子的抑制不仅可以提高重采样过程,而且还提高了跟踪器精度。基准视频序列的实验验证揭示了所提出的多个跟踪框架在各种动态环境挑战下优于最先进的跟踪器。

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