首页> 外文期刊>Journal of Microscopy >Robust, globally consistent and fully automatic multi-image registration and montage synthesis for 3-D multi-channel images.
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Robust, globally consistent and fully automatic multi-image registration and montage synthesis for 3-D multi-channel images.

机译:用于3D多通道图像的可靠,全局一致的全自动多图像配准和剪辑合成。

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The need to map regions of brain tissue that are much wider than the field of view of the microscope arises frequently. One common approach is to collect a series of overlapping partial views, and align them to synthesize a montage covering the entire region of interest. We present a method that advances this approach in multiple ways. Our method (1) produces a globally consistent joint registration of an unorganized collection of three-dimensional (3-D) multi-channel images with or without stage micrometer data; (2) produces accurate registrations withstanding changes in scale, rotation, translation and shear by using a 3-D affine transformation model; (3) achieves complete automation, and does not require any parameter settings; (4) handles low and variable overlaps (5-15%) between adjacent images, minimizing the number of images required to cover a tissue region; (5) has the self-diagnostic ability to recognize registration failures instead of delivering incorrect results; (6) can handle a broad range of biological images by exploiting generic alignment cues from multiple fluorescence channels without requiring segmentation and (7) is computationally efficient enough to run on desktop computers regardless of the number of images. The algorithm was tested with several tissue samples of at least 50 image tiles, involving over 5000 image pairs. It correctly registered all image pairs with an overlap greater than 7%, correctly recognized all failures, and successfully joint-registered all images for all tissue samples studied. This algorithm is disseminated freely to the community as included with the Fluorescence Association Rules for Multi-Dimensional Insight toolkit for microscopy (http://www.farsight-toolkit.org).
机译:经常需要绘制比显微镜的视野宽得多的大脑组织区域。一种常见的方法是收集一系列重叠的局部视图,并将它们对齐以合成覆盖整个感兴趣区域的蒙太奇。我们提出了一种以多种方式改进这种方法的方法。我们的方法(1)产生具有或不具有工作台千分尺数据的无组织三维(3-D)多通道图像集合的全局一致联合配准; (2)通过使用3D仿射变换模型来生成能够抵抗缩放,旋转,平移和剪切变化的准确配准; (3)实现了完全的自动化,并且不需要任何参数设置; (4)处理相邻图像之间的重叠少且可变(5-15%),从而最大限度地减少覆盖组织区域所需的图像数量; (5)具有自我诊断能力,可以识别注册失败而不是产生不正确的结果; (6)可以通过利用来自多个荧光通道的通用比对线索来处理各种生物图像,而无需进行分割;(7)的计算效率足以在台式计算机上运行,​​而不管图像的数量如何。该算法使用至少50个图像图块的几个组织样本进行了测试,涉及超过5000个图像对。它正确地记录了重叠度大于7%的所有图像对,正确地识别了所有故障,并成功地联合记录了所有研究的组织样本的所有图像。该算法可自由散发给社区,包括用于显微镜的多维洞察力荧光关联规则工具包(http://www.farsight-toolkit.org)。

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