首页> 外文期刊>Multimedia Tools and Applications >Dynamic tracking re-adjustment: a method for automatic tracking recovery in complex visual environments
【24h】

Dynamic tracking re-adjustment: a method for automatic tracking recovery in complex visual environments

机译:动态跟踪重新调整:在复杂视觉环境中自动跟踪恢复的方法

获取原文
获取原文并翻译 | 示例
           

摘要

Detection and analysis of events from video sequences is probably one of the most important research issues in computer vision and pattern analysis society. Before, however, applying methods and tools for analyzing actions, behavior or events, we need to implement robust and reliable tracking algorithms able to automatically monitor the movements of many objects in the scene regardless of the complexity of the background, existence of occlusions and illumination changes. Despite the recent research efforts in the field of object tracking, the main limitation of most of the existing algorithms is that they are not enriched with automatic recovery strategies able to re-initialize tracking whenever its performance severely deteriorates. This is addressed in this paper by proposing an automatic tracking recovery tool which improves the performance of any tracking algorithm whenever the results are not acceptable. For the recovery, non-linear object modeling tools are used which probabilistically label image regions to object classes. The models are also time varying. The first property is implemented in our case using concepts from functional analysis which allow parametrization of any arbitrary non-linear function (with some restrictions on its continuity) as a finite series of known functional components but of unknown coefficients. The second property is addressed by proposing an innovative algorithm that optimally estimates the non-linear model at an upcoming time instance based on the current non-linear models that have been already approximated. The architecture is enhanced by a decision mechanism which permits verification of the time instances in which tracking recovery should take place. Experimental results on a set of different video sequences that present complex visual phenomena (full and partial occlusions, illumination variations, complex background, etc) are depicted to demonstrate the efficiency of the proposed scheme in proving tracking in very difficult visual content conditions. Additionally, criteria are proposed to objectively evaluate the tracking performance and compare it with other strategies.
机译:视频序列中事件的检测和分析可能是计算机视觉和模式分析社会中最重要的研究问题之一。但是,在应用分析动作,行为或事件的方法和工具之前,我们需要实现可靠且可靠的跟踪算法,该算法能够自动监视场景中许多对象的运动,而无需考虑背景的复杂性,遮挡物和照明的存在情况。变化。尽管最近在对象跟踪领域进行了研究,但大多数现有算法的主要局限性在于它们并未充斥能够在性能严重下降时重新初始化跟踪的自动恢复策略。本文提出了一种自动跟踪恢复工具来解决此问题,该工具可以在结果不可接受时提高任何跟踪算法的性能。为了进行恢复,使用了非线性对象建模工具,该工具可以将图像区域概率地标记为对象类别。模型也随时间变化。在我们的案例中,第一个属性是使用功能分析的概念来实现的,这些概念允许将任意非线性函数(对其连续性有所限制)的参数化为已知函数分量的有限序列,但系数未知。通过提出一种创新算法来解决第二个问题,该算法基于已经近似的当前非线性模型,在即将到来的时间实例上优化估计非线性模型。决策机制增强了该体系结构,该机制允许验证应进行跟踪恢复的时间实例。描述了呈现复杂视觉现象(完全和部分遮挡,照明变化,复杂背景等)的一组不同视频序列的实验结果,以证明所提出方案在证明非常困难的视觉内容条件下的跟踪效率。此外,提出了一些标准以客观地评估跟踪性能并将其与其他策略进行比较。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号