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1.
J Microsc ; 245(2): 140-7, 2012 Feb.
Article in English | MEDLINE | ID: mdl-21972793

ABSTRACT

In this paper, we present an automatic segmentation method that detects virus particles of various shapes in transmission electron microscopy images. The method is based on a statistical analysis of local neighbourhoods of all the pixels in the image followed by an object width discrimination and finally, for elongated objects, a border refinement step. It requires only one input parameter, the approximate width of the virus particles searched for. The proposed method is evaluated on a large number of viruses. It successfully segments viruses regardless of shape, from polyhedral to highly pleomorphic.


Subject(s)
Microscopy, Electron, Transmission/methods , Virion/ultrastructure , Virology/methods , Viruses/classification , Viruses/ultrastructure , Feces/virology , Humans , Image Enhancement/methods , Image Processing, Computer-Assisted , Mouth/virology , Nasal Cavity/virology , Pattern Recognition, Automated , Virus Diseases/virology , Viruses/isolation & purification
2.
J Microsc ; 240(3): 249-58, 2010 Dec.
Article in English | MEDLINE | ID: mdl-21077885

ABSTRACT

Intensity normalization is important in quantitative image analysis, especially when extracting features based on intensity. In automated microscopy, particularly in large cellular screening experiments, each image contains objects of similar type (e.g. cells) but the object density (number and size of the objects) may vary markedly from image to image. Standard intensity normalization methods, such as matching the grey-value histogram of an image to a target histogram from, i.e. a reference image, only work well if both object type and object density are similar in the images to be matched. This is typically not the case in cellular screening and many other types of images where object type varies little from image to image, but object density may vary dramatically. In this paper, we propose an improved form of intensity normalization which uses grey-value as well as gradient information. This method is very robust to differences in object density. We compare and contrast our method with standard histogram normalization across a range of image types, and show that the modified procedure performs much better when object density varies between images.


Subject(s)
Image Processing, Computer-Assisted/methods , Microscopy/methods , Automation , Cells, Cultured , Epithelial Cells/cytology , Humans , Lymphocytes/cytology , Neurons/cytology
3.
J Microsc ; 215(Pt 1): 67-76, 2004 Jul.
Article in English | MEDLINE | ID: mdl-15230877

ABSTRACT

We present a region-based segmentation method in which seeds representing both object and background pixels are created by combining morphological filtering of both the original image and the gradient magnitude of the image. The seeds are then used as starting points for watershed segmentation of the gradient magnitude image. The fully automatic seeding is done in a generous fashion, so that at least one seed will be set in each foreground object. If more than one seed is placed in a single object, the watershed segmentation will lead to an initial over-segmentation, i.e. a boundary is created where there is no strong edge. Thus, the result of the initial segmentation is further refined by merging based on the gradient magnitude along the boundary separating neighbouring objects. This step also makes it easy to remove objects with poor contrast. As a final step, clusters of nuclei are separated, based on the shape of the cluster. The number of input parameters to the full segmentation procedure is only five. These parameters can be set manually using a test image and thereafter be used on a large number of images created under similar imaging conditions. This automated system was verified by comparison with manual counts from the same image fields. About 90% correct segmentation was achieved for two- as well as three-dimensional images.


Subject(s)
Cell Nucleus/ultrastructure , Image Processing, Computer-Assisted/methods , Uterine Cervical Neoplasms/pathology , Automation/methods , Female , Humans , Microscopy, Fluorescence/methods , Sensitivity and Specificity , Uterine Cervical Neoplasms/ultrastructure
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