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Multi-template matching: a versatile tool for object-localization in microscopy images

机译:多模板匹配:显微镜图像中对象定位的多功能工具

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The localization of objects of interest is a key initial step in most image analysis workflows. For biomedical image data, classical image-segmentation methods like thresholding or edge detection are typically used. While those methods perform well for labelled objects, they are reaching a limit when samples are poorly contrasted with the background, or when only parts of larger structures should be detected. Furthermore, the development of such pipelines requires substantial engineering of analysis workflows and often results in case-specific solutions. Therefore, we propose a new straightforward and generic approach for object-localization by template matching that utilizes multiple template images to improve the detection capacity. We provide a new implementation of template matching that offers higher detection capacity than single template approach, by enabling the detection of multiple template images. To provide an easy-to-use method for the automatic localization of objects of interest in microscopy images, we implemented multi-template matching as a Fiji plugin, a KNIME workflow and a python package. We demonstrate its application for the localization of entire, partial and multiple biological objects in zebrafish and medaka high-content screening datasets. The Fiji plugin can be installed by activating the Multi-Template-Matching and IJ-OpenCV update sites. The KNIME workflow is available on nodepit and KNIME Hub. Source codes and documentations are available on GitHub (https://github.com/multi-template-matching). The novel multi-template matching is a simple yet powerful object-localization algorithm, that requires no data-pre-processing or annotation. Our implementation can be used out-of-the-box by non-expert users for any type of 2D-image. It is compatible with a large variety of applications including, for instance, analysis of large-scale datasets originating from automated microscopy, detection and tracking of objects in time-lapse assays, or as a general image-analysis step in any custom processing pipelines. Using different templates corresponding to distinct object categories, the tool can also be used for classification of the detected regions.
机译:感兴趣对象的本地化是大多数图像分析工作流程中的关键初始步骤。对于生物医学图像数据,通常使用阈值或边缘检测等经典图像分割方法。虽然这些方法对标记物体表现良好,但当样本与背景对比时,它们达到限制,或者应该检测到较大结构的部分时。此外,这种管道的发展需要实质性的分析工作流程,并且经常导致特定于具体的解决方案。因此,我们提出了一种通过模板匹配的对象定位的新直接和通用方法,该模板匹配利用多个模板图像来提高检测能力。我们通过启用多个模板图像,提供比单个模板方法更高的检测能力的模板匹配的新实现。为了提供易于使用的方法,用于自动定位对显微镜图像中的感兴趣对象,我们实现了多模板匹配作为Fiji插件,一个KNIME工作流和Python包。我们展示了Zebrafish和Medaka高含量筛选数据集的整个,部分和多种生物物体本地化的应用。可以通过激活多模板匹配和IJ-OpenCV更新站点来安装Fiji插件。 Nodepit和Knime Hub上提供了KNIME工作流程。源代码和文档可在github上使用(https://github.com/multi-template-幻算)。新型多模板匹配是一种简单而强大的对象定位算法,无需数据预处理或注释。我们的实现可以由非专家用户出于任何类型的2D图像的框中使用。它与各种应用兼容,包括例如源自自动显微镜的大规模数据集,延时测定中的物体检测和跟踪物体,或作为任何自定义处理管道中的一般图像分析步骤。使用对应于不同的对象类别的不同模板,该工具也可以用于检测到的区域的分类。

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