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On Cell Detection System with User Interaction

机译:对具有用户交互的细胞检测系统

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摘要

Cell detection is the essential step for various analyses in biological fields. One of the conventional approach is to construct a specialized method for every specified task, but it is not efficient in the meaning of the coding workload. Another approach is based on some machine learning technique, but it is difficult to prepare many training data. To solve these problems, we propose a balanced system by combining image processing and machine learning. The system is universally applicable to any image, because it only consists of basic methods of image processing. The code of the system does not need to be modified, because its behavior is adaptively tuned by machine learning. Users are free from excessive request of training data, because only a few desirable data is specifically requested by the system. The system consists of three units to achieve functionalities for avoiding parameter collision, compensating lack of training data, and reducing complexity of feature space. The effectiveness of the system is evaluated with a typical set of cell images, and the result is sufficient. The proposed system provides a reasonable way of preparing a tuned cell detection method for arbitrary sets of images in this field.
机译:小区检测为在生物领域中各种分析的必要步骤。一种常规方法是建立一个专门的方法对每一个特定的任务,但它是没有效率的编码工作量的意思。另一种方法是基于一些机器学习技术,但很难要准备许多训练数据。为了解决这些问题,我们结合图像处理和机器学习提出了一个平衡的系统。该系统是普遍适用于任何图像,因为它仅包括图像处理的基本方法。该系统的代码并不需要进行修改,因为它的行为是自适应的机器学习调整。用户是从训练数据的过度请求自由,因为只有少数期望数据具体由系统请求。该系统由三个单位实现的功能,避免参数碰撞,补偿缺乏训练数据,减少的特征空间的复杂性。该系统的有效性与一组典型的细胞图像的评价,其结果是足够的。所提出的系统提供了制备用于这一领域的任意组图像的调谐小区检测方法的合理途径。

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