基于对象级翘曲损失的多帧时空背景下的一致细胞跟踪

Junya Hayashida, Kazuya Nishimura, Ryoma Bise
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引用次数: 3

摘要

多目标跟踪是生物医学图像分析的关键。大多数方法采用检测跟踪方法,包括使用对象检测器和学习被检测区域的外观特征模型进行关联。虽然这些方法可以通过学习外观相似性特征来识别帧间相同的对象,但是由于单元格具有相似的外观,并且它们的形状会随着迁移而变化,因此在识别相同的单元格时存在困难。此外,单元格通常在几个帧中部分重叠。在这种情况下,即使是专业的生物学家也需要了解时空背景,以便识别单个细胞。为了解决这种困难的情况,我们提出了一种细胞跟踪方法,该方法可以通过使用长期运动估计和对象级扭曲损失来有效地利用多帧中的时空上下文。我们进行的实验表明,在真实生物图像的各种条件下,所提出的方法优于最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Consistent Cell Tracking in Multi-frames with Spatio-Temporal Context by Object-Level Warping Loss
Multi-object tracking is essential in biomedical image analysis. Most methods follow a tracking-by-detection approach that involves using object detectors and learning the appearance feature models of the detected regions for association. Although these methods can learn the appearance similarity features to identify the same objects among frames, they have difficulties identifying the same cells because cells have a similar appearance and their shapes change as they migrate. In addition, cells often partially overlap for several frames. In this case, even an expert biologist would require knowledge of the spatial-temporal context in order to identify individual cells. To tackle such difficult situations, we propose a cell-tracking method that can effectively use the spatial-temporal context in multiple frames by using long-term motion estimation and an object-level warping loss. We conducted experiments showing that the proposed method outperformed state-of-the-art methods under various conditions on real biological images.
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