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Confidence-Based Hybrid Tracking to Overcome Visual Tracking Failures in Calibration-Less Vision-Guided Micromanipulation

机译:基于置信的混合跟踪,以克服耐校准视觉引导的微操纵中的视觉跟踪失败

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This article proposes a confidence-based approach for combining two visual tracking techniques to minimize the influence of unforeseen visual tracking failures to achieve uninterrupted vision-based control. Despite research efforts in vision-guided micromanipulation, existing systems are not designed to overcome visual tracking failures, such as inconsistent illumination condition, regional occlusion, unknown structures, and nonhomogenous background scene. There remains a gap in expanding current procedures beyond the laboratory environment for practical deployment of vision-guided micromanipulation system. A hybrid tracking method, which combines motion-cue feature detection and score-based template matching, is incorporated in an uncalibrated vision-guided workflow capable of self-initializing and recovery during the micromanipulation. Weighted average, based on the respective confidence indices of the motion-cue feature localization and template-based trackers, is inferred from the statistical accuracy of feature locations and the similarity score-based template matches. Results suggest improvement of the tracking performance using hybrid tracking under the conditions. The mean errors of hybrid tracking are maintained at subpixel level under adverse experimental conditions while the original template matching approach has mean errors of 1.53, 1.73, and 2.08 pixels. The method is also demonstrated to be robust in the nonhomogeneous scene with an array of plant cells. By proposing a self-contained fusion method that overcomes unforeseen visual tracking failures using pure vision approach, we demonstrated the robustness in our developed low-cost micromanipulation platform. Note to Practitioners-Cell manipulation is traditionally done in highly specialized facilities and controlled environment. Existing vision-based methods do not readily fulfill the need for the unique requirements in cell manipulation including prospective plant cell-related applications. There is a need for robust visual tracking to overcome visual tracking failure during the automated vision-guided micromanipulation. To address the gap in maintaining continuous tracking for vision-guided micromanipulation under unforeseen visual tracking failures, we proposed a purely visual data-driven hybrid tracking approach. Our proposed confidence-based approach combines two tracking techniques to minimize the influence of scene uncertainties, hence, achieving uninterrupted vision-based control. Because of its readily deployable design, the method can be generalized for a wide range of vision-guided micromanipulation applications. This method has the potential to significantly expand the capability of cell manipulation technology to even include prospective applications associated with plant cells, which are yet to be explored.
机译:本文提出了一种基于置信的方法,用于组合两种视觉跟踪技术,以最小化不可预见的视觉跟踪故障的影响,以实现不间断的基于视觉控制。尽管在视野引导的微操纵中进行了研究努力,但现有系统并非旨在克服视觉跟踪故障,例如不一致的照明条件,区域遮挡,未知结构和非源性背景场景。扩大实验室环境超出实际部署的现有程序,仍然存在缺口,以实现视力引导的微操纵系统。一种混合跟踪方法,其结合了运动提示特征检测和基于刻度的模板匹配,其结合在能够在微操纵期间能够自初始化和恢复的未校准的视觉引导工作流程中。根据运动提示特征定位和基于模板的跟踪器的相应置信指标,从特征位置的统计准确性和基于相似度得分的模板匹配的基础上加权平均值。结果建议在条件下使用混合跟踪改进跟踪性能。混合跟踪的平均误差在不利的实验条件下在子像素水平上保持,而原始模板匹配方法具有1.53,1.73和2.08像素的平均误差。该方法还证明在具有植物细胞阵列的非均匀场景中是鲁棒的。通过提出使用纯视觉方法克服了不可预见的融合方法,克服了不可预见的视觉跟踪失败,我们证明了我们开发的低成本微操矩平台的鲁棒性。向从业者 - 细胞操作传统上在高度专业化的设施和受控环境中进行。现有的基于视觉的方法不容易满足对细胞操作中的独特要求的需求,包括预期植物细胞相关的应用。需要强大的视觉跟踪,以克服自动视觉导向的微操矩期间的视觉跟踪故障。为了解决在不可预见的视觉跟踪故障下保持持续跟踪视觉引导的微控制率的差距,我们提出了一种纯粹的视觉数据驱动的混合跟踪方法。我们提出的基于置信度的方法结合了两个跟踪技术,以最大限度地减少场景不确定性的影响,因此,实现不间断的基于视觉的控制。由于其易于部署设计,该方法可以广泛地推广广泛的视觉引导的微操纵应用。该方法有可能显着扩展细胞操纵技术的能力,甚至包括与植物细胞相关的前瞻性应用,尚未探索。

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