滚动和粘附白细胞的自动实时视频挖掘

Xin C. Anders, Chengcui Zhang, Hong Yuan
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摘要

在本文中,我们提出了一个用于活体视频的滚动和粘附白细胞的自动时空挖掘系统。白细胞粘附的大小和滚动速度的降低是炎症反应研究的共同兴趣。目前,还没有一个现有的系统可以完美地实现这一目的。我们的方法首先通过时间特征的概率学习来定位移动的白细胞。然后通过中值滤波和位置滤波去除噪声,最后通过质心跟踪器进行运动对应。通过首先提取移动白细胞的信息,我们可以使用自适应阈值法以更稳健的方式提取粘附白细胞。实验结果证明了该方法的有效性和高效性
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Intravital Video Mining of Rolling and Adhering Leukocytes
In this paper, we present an automatic spatio-temporal mining system of rolling and adherent leukocytes for intravital videos. The magnitude of leukocyte adhesion and the decrease in rolling velocity are common interests for inflammation response studies. Currently, there is no existing system which is perfect for such purposes. Our approach starts with locating moving leukocytes by probabilistic learning of temporal features. It then removes noises through median and location-based filtering, and finally performs motion correspondence through centroid trackers. By extracting the information about moving leukocytes first, we are able to extract adherent leukocytes in a more robust way with an adaptive threshold method. The effectiveness and the efficiency of the proposed method are demonstrated by the experimental results
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