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Medical image segmentation algorithm used in CT room

A medical image and segmentation algorithm technology, applied in the field of medical image segmentation algorithm, can solve problems such as easy control, tissue aliasing, and difficult image segmentation, and achieve the effect of solving the problem of over-segmentation and facilitating clinical diagnosis

Inactive Publication Date: 2016-06-22
孙燕新
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Problems solved by technology

However, due to the influence of various external factors such as noise in the CT imaging process, aliasing and blurring between different tissues are prone to occur, resulting in difficulties in image segmentation.
Wang Na et al. proposed a new type of FCM method, which is a fuzzy clustering method, suitable for medical images such as MRI or CT with uncertainty and ambiguity in segmentation, and is an effective medical image segmentation method. Segmentation method, however, the FCM algorithm does not optimize the characteristics of the sample, but directly uses the characteristics of the sample to optimize, but directly uses the characteristics of the sample to cluster, so that the clustering is easily subject to the distribution state of the sample

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Embodiment

[0021] A medical image segmentation algorithm used in CT room, the segmentation steps are as follows: firstly, the CT image is divided into different small areas through the watershed algorithm, and then according to the KFCM algorithm, the average gray value of each small area is divided by the Mercer kernel Mapping to a high-dimensional feature space makes the features that were not displayed in the image segmented by the watershed algorithm appear; the algorithm steps are as follows:

[0022] (1) Perform median filtering on the image preprocessing;

[0023] (2) Carry out watershed segmentation to the preprocessed image, and store the label k of each small area;

[0024] (3) Calculate the average gray value x of each area k , which represents the sample set of the input space, k=1, 2,..., n, n is the number of regions formed after the image watershed segmentation;

[0025] (4) Select the classification number C, the threshold ε, and the fuzzy index m;

[0026] (5) Calcula...

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Abstract

The present invention discloses a medical image segmentation algorithm used in a CT room. The segmentation steps of the algorithm are that: firstly, a CT image is segmented into different small areas via a watershed algorithm, then an average gray value of the small areas is mapped to a high dimension characteristic space according to a KFCM algorithm and by utilizing a Mercer kernel, so that the original characteristics which are not displayed in a watershed algorithm segmentation image are displayed. The algorithm comprises the following steps of (1) pre-processing an image, and carrying out the median filtering; (2) carrying out the watershed segmentation on the pre-processed image, and storing the label k of each small area; (3) calculating the average gray value x<k> of each area, wherein the average gray value x<k> represents a sample set of an input space, k =1, 2, ..., n, n is the area number formed after the image watershed segmentation; (4) selecting a classification number C, a threshold value epsilon and a fuzzy exponent m; (5) calculating a clustering center and a weighting matrix. The medical image segmentation algorithm used in the CT room utilizes the advantages of the watershed algorithm and the weighted kernel clustering, also greatly overcomes the disadvantages of the two algorithms.

Description

technical field [0001] The invention relates to the field of CT technology, in particular to a medical image segmentation algorithm used in a CT room. Background technique [0002] Image segmentation refers to separating the meaningful objects in the image from their background, and separating these objects according to different meanings. The methods can be roughly divided into two categories: edge detection-based methods and region-based methods. Currently, CT Imaging technology is widely used in visceral imaging, bone detection and other human tissue visualization, which can provide detailed images of various parts of the human body in any plane. However, due to the influence of various external factors such as noise in the CT imaging process, aliasing and blurring between different tissues are prone to occur, resulting in difficulties in image segmentation. Wang Na et al. proposed a new type of FCM method, which is a fuzzy clustering method, suitable for medical images ...

Claims

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Application Information

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IPC IPC(8): G06T7/00
CPCG06T2207/10081G06T2207/20152
Inventor 孙燕新于翠妮韩景奇尹喜玲赵钢王明帅李涌
Owner 孙燕新
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