在时间圈图像中使用自适应多阶段卡尔曼滤波的自动细胞跟踪

Hane Naghshbandi, Yaser Baleghi Damavandi
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引用次数: 1

摘要

在显微镜图像中分割活细胞并跟踪其运动在生物学研究中具有重要意义,并且在疾病诊断、靶向治疗、药物输送和许多其他医学应用中发挥了至关重要的作用。由于大量的延时图像数据,自动图像分析可以替代人工分析,而人工分析是不合理的耗时。然而,低分辨率显微图像、不可预测的细胞行为和多次细胞分裂使得自动细胞跟踪具有挑战性。本文提出了一种基于两阶段自适应卡尔曼预测的多目标跟踪方法。细胞分割是使用结合各种形态操作的边缘检测器进行的。跟踪部分包括两个一般阶段。首先,用等速卡尔曼滤波估计连续帧中每个细胞的位置;初级卡尔曼滤波器能够检测到很大比例的细胞,但是高细胞分裂率和细胞在视场内外的迁移导致了最终结果的误差。在第二阶段,利用初始跟踪结果提取的修正参数,提出二次卡尔曼滤波器,估计每帧中细胞的位置,减少误差,改善跟踪结果。实验结果表明,该方法的细胞分割准确率为94.37%。通过与人工跟踪结果的比较,验证了整个方法的有效性,证明了该方法的有效性。
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Automated Cell Tracking Using Adaptive Multi-stage Kalman Filter In Time-laps Images
Segmenting living cells and tracking their movement in microscopy images are significant in biological studies and have played a crucial role in disease diagnosis, targeted therapy, drug delivery, and many other medical applications. Due to a large amount of time-lapse image data, automated image analysis can be a proper alternative to manual analysis, which is unreasonably time-consuming. However, Low-resolution microscopic images, unpredictable cell behavior, and multiple cell divisions make automated cell tracking challenging. In this paper, we propose a novel multi-object tracking approach guided by a two-stage adaptive Kalman forecast. Cell segmentation is performed using an edge detector combined with various morphological operations. The tracking section includes two general stages. At first, a Kalman filter with a constant speed is used to estimate the position of each cell in consecutive frames. The primary Kalman filter was able to detect a significant percentage of cells, but the high rate of cell division and migration of cells in or out of the field of view has caused errors in the final result. In the next stage, a secondary Kalman filter with modified parameters extracted from the results of initial tracking is proposed to estimate the position of cells in each frame, decrease errors, and improve the tracking results. Experimental results indicate that our method is 94.37% accurate in segmenting cells. The validity of the whole method has been conducted by comparing the results of the proposed method with manual tracking results, which demonstrates its efficiency.
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