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Object Segmentation, Quantification, Counting, and Tracking

机译:对象分割,量化,计数和跟踪

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摘要

A complete system for object segmentation, counting, quantification, and tracking from microscopic images was implemented. We found that image deconvolution and reconstruction operations are essential to the success of any general-purpose segmentation algorithm and hence are of paramount importance for a counting and tracking software system. Wavelet-based image enhancement, background equalization, and noise suppression routines are the components in our novel general-purpose segmentation algorithm. Simple object recognition based on averages and preset tolerances suffices for most applications. As expected, boundary smoothing is important if watershed-based blob separation is to be used. One of the challenges of a general-purpose counting and tracking system is the need for a large number of object quantification components (features). In tracking we found that incorporating weighted features into an error function improves the accuracy over just the path coherence criterion and that evaluating correspondences over multiple time frames improves the accuracy over using only two consecutive time frames.
机译:实施了用于从显微图像进行对象分割,计数,量化和跟踪的完整系统。我们发现,图像去卷积和重构操作对于任何通用分割算法的成功都是至关重要的,因此对于计数和跟踪软件系统至关重要。基于小波的图像增强,背景均衡和噪声抑制例程是我们新颖的通用分割算法的组成部分。对于大多数应用,基于平均值和预设公差的简单对象识别就足够了。不出所料,如果要使用基于分水岭的斑点分离,边界平滑很重要。通用计数和跟踪系统的挑战之一是需要大量的对象量化组件(功能)。在跟踪中,我们发现将加权特征合并到误差函数中仅在路径一致性标准上提高了准确性,而在多个时间范围内评估对应关系则在仅使用两个连续时间范围内提高了准确性。

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