Performance of Low-Level Motion Estimation Methods for Confocal Microscopy of Plant Cells in vivo

T. Roberts, S. McKenna, N. Wuyts, T. Valentine, A. Bengough
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引用次数: 16

Abstract

The performance of various low-level motion estimation methods applied to fluorescence labelled growing cellular structures imaged using confocal laser scanning microscopy is investigated. This is a challenging and unusual domain for motion estimation methods. A selection of methods are discussed that can be contrasted in terms of how much spatial or temporal contextual information is used. The Lucas Kanade feature tracker, a spatially and temporally localised method, was, as one would expect, accurate around resolvable structure. It was not able to track the smaller, repetitive cell structure in the root tip and was somewhat prone to identifying spurious features. This approach is improved by developing a full multi-frame, robust, Bayesian method, and it is demonstrated that by using extra frames with motion constraints reduces such errors. Next, spatially global methods are discussed, including robust variational smoothing and Markov Random Field (MRF) modelling. A key conclusion that is drawn from investigation of these methods is that generic low-level (robust) smoothing functions do not provide good results in this application and that this is probably due to the large regions with little stable structure. Furthermore, contrary to recently reported successes, graph cuts and loopy belief propagation for MAP estimation of the MRF labels provided often poor and inconsistent estimates. The results suggest the need for greater emphasis on temporal smoothing for generic low-level motion estimation tools and more task specific, spatial constraints, perhaps in the form of high level models in order to accurately recover motion from such data. Finally, the form of the estimated growth is briefly discussed and related to contemporary biological models. We hope that this paper will assist non-specialists in applying state-of-the-art methods to this form of data.
植物细胞体内共聚焦显微镜低水平运动估计方法的性能
研究了各种低水平运动估计方法在共聚焦激光扫描显微镜下荧光标记生长细胞结构成像中的应用。对于运动估计方法来说,这是一个具有挑战性和不寻常的领域。讨论了可以根据使用多少空间或时间上下文信息进行对比的方法选择。Lucas Kanade特征跟踪器是一种空间和时间局部化的方法,正如人们所期望的那样,它在可解析结构周围是准确的。它不能跟踪根尖上较小的、重复的细胞结构,并且在某种程度上容易识别虚假的特征。该方法通过开发一种完整的多帧鲁棒贝叶斯方法得到改进,并证明通过使用带有运动约束的额外帧可以减少此类误差。其次,讨论了空间全局方法,包括鲁棒变分平滑和马尔可夫随机场(MRF)建模。从这些方法的研究中得出的一个关键结论是,一般的低级(鲁棒)平滑函数在此应用中不能提供良好的结果,这可能是由于具有很少稳定结构的大区域。此外,与最近报道的成功相反,图切割和循环信念传播用于MRF标签的MAP估计通常提供较差和不一致的估计。结果表明,需要更多地强调时间平滑的一般低级运动估计工具和更多的任务具体,空间约束,也许在高层次的模型的形式,以便准确地从这些数据中恢复运动。最后,简要讨论了估计生长的形式,并与当代生物学模型相关联。我们希望本文将帮助非专业人士应用最先进的方法来处理这种形式的数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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