首页> 外文会议>Visual Communications and Image Processing 2006 pt.2; Electronic Imaging Science and Technology >FISH TRACKING BY COMBINING MOTION BASED SEGMENTATION AND PARTICLE FILTERING
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FISH TRACKING BY COMBINING MOTION BASED SEGMENTATION AND PARTICLE FILTERING

机译:通过将基于运动的分段和粒子滤波相结合来进行鱼跟踪

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In this paper, we suggest a new importance sampling scheme to improve a particle filtering based tracking process. This scheme relies on exploitation of motion segmentation. More precisely, we propagate hypotheses from particle filtering to blobs of similar motion to target. Hence, search is driven toward regions of interest in the state space and prediction is more accurate. We also propose to exploit segmentation to update target model. Once the moving target has been identified, a representative model is learnt from its spatial support. We refer to this model in the correction step of the tracking process. The importance sampling scheme and the strategy to update target model improve the performance of particle filtering in complex situations of occlusions compared to a simple Bootstrap approach as shown by our experiments on real fish tank sequences.
机译:在本文中,我们提出了一种新的重要性采样方案,以改进基于粒子过滤的跟踪过程。该方案依赖于运动分割的利用。更准确地说,我们将假设从粒子滤波传播到目标相似运动的斑点。因此,将搜索驱动到状态空间中的感兴趣区域,并且预测更加准确。我们还建议利用细分来更新目标模型。一旦确定了移动目标,便会从其空间支持中获悉代表性模型。我们在跟踪过程的校正步骤中引用此模型。与简单的Bootstrap方法相比,重要性抽样方案和更新目标模型的策略在复杂的遮挡情况下提高了粒子过滤的性能,如我们在真实鱼缸序列上的实验所示。

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