首页> 外文学位 >Detection and tracking of multiple objects in fluorescence microscopy.
【24h】

Detection and tracking of multiple objects in fluorescence microscopy.

机译:在荧光显微镜中检测和跟踪多个物体。

获取原文
获取原文并翻译 | 示例

摘要

Researchers in biology regularly produce large data sets of noisy images and videos that contain hundreds of fluorescent objects interacting in a cluttered background. This dissertation presents a statistical framework for analyzing images and videos of this kind. Specifically we analyze images that contain hundreds of overlapping polonies and videos of hundreds of vesicles and tubular organelles produced by total internal reflection fluorescent microscopy.;We approach the problem of detecting and tracking multiple fluorescent objects by defining statistical data models for individual objects and background, with clear rules to compose them in an image. A statistical model for the data allows us to formulate well defined hypotheses and properly weigh them on-line. The computational challenge of object detection is addressed by defining a sequence of coarse-to-fine tests, derived from the statistical model, to quickly eliminate most candidate locations for the objects. The computational load of the tests is initially very low and gradually increases as the false positives become more difficult to eliminate. Only at the last step, state variables are estimated from a complete time-dependent model. Processing time thus mainly depends on the number and size of the objects in the image and not on image size.;The main contributions of this dissertation are: (a) a general statistical model for image and video data presenting multiple fluorescent objects such as polonies, vesicles and tubular objects, (b) the use of these models to derive coarse-to-fine stable algorithms for efficient detection and tracking of overlapping objects (c) the derivation of simple tests to identify types of vesicle dynamics, and (d) two end-user applications: one for polony detection and another for vesicle tracking and dynamics identification.
机译:生物学研究人员通常会产生大量的嘈杂图像和视频数据集,其中包含数百个在杂乱背景中相互作用的荧光对象。本文提出了一种用于分析这类图像和视频的统计框架。具体来说,我们分析的图像包含数百个重叠的多边形和全内反射荧光显微镜产生的数百个囊泡和管状细胞器的视频。我们通过定义单个对象和背景的统计数据模型来解决检测和跟踪多个荧光对象的问题,有清晰的规则将它们组成图像。数据的统计模型使我们能够制定明确定义的假设,并在网上对其进行适当权衡。通过定义一系列从统计模型得出的从粗到精的测试,可以快速消除对象的大多数候选位置,从而解决了对象检测的计算难题。测试的计算量最初很低,随着误报变得更加难以消除,测试负载逐渐增加。仅在最后一步,才根据完整的时间相关模型估算状态变量。因此,处理时间主要取决于图像中对象的数量和大小,而不取决于图像大小。本论文的主要贡献是:(a)图像和视频数据的通用统计模型,可显示多个荧光对象(如多边形) ,囊泡和管状物体,(b)使用这些模型得出从粗到细的稳定算法,以有效检测和跟踪重叠物体(c)推导简单测试以识别囊泡动力学类型,以及(d)两种最终用户应用程序:一种用于polony检测,另一种用于囊泡跟踪和动力学识别。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号