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Chen Zhen-cheng

Bio: Chen Zhen-cheng is an academic researcher from Central South University. The author has contributed to research in topics: Image segmentation & Edge detection. The author has an hindex of 2, co-authored 4 publications receiving 190 citations.

Papers
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Proceedings ArticleDOI
01 Jan 2005
TL;DR: A novel mathematical morphological edge detection algorithm is proposed to detect the edge of lungs CT image with salt-and-pepper noise and the experimental results show that the proposed algorithm is more efficient for medical image denoising and edge detection than the usually used template-based edge detection algorithms and general morphologicalEdge detection algorithms.
Abstract: Medical images edge detection is an important work for object recognition of the human organs and it is an important pre-processing step in medical image segmentation and 3D reconstruction. Conventionally, edge is detected according to some early brought forward algorithms such as gradient-based algorithm and template-based algorithm, but they are not so good for noise medical image edge detection. In this paper, basic mathematical morphological theory and operations are introduced at first, and then a novel mathematical morphological edge detection algorithm is proposed to detect the edge of lungs CT image with salt-and-pepper noise. The experimental results show that the proposed algorithm is more efficient for medical image denoising and edge detection than the usually used template-based edge detection algorithms and general morphological edge detection algorithms

212 citations

Proceedings ArticleDOI
01 Jan 2005
TL;DR: A pocket blood sugar apparatus tested by enzyme electrode, which was designed using carbon and silver plasma as conducting materials, are better for measuring blood sugar, and the results are consistent with what the large biochemical instruments get.
Abstract: A pocket blood sugar apparatus tested by enzyme electrode, which was designed using carbon and silver plasma as conducting materials. Both the work and reference electrodes are applied to the parts of enzyme electrode. The glucose oxidase is taken as the medium of blood sugar measuring. And the range of measuring glucose is about 50mg/dL - 500mgl/dL. It has better linear for the results and fit coefficient arrives at 0.985. Its sensitivity of measurement is higher than current glucose biosensor obviously. A single chip microcomputer, AD mu C812, is used for central control processor of the instrument parts. It measures the output of microampere level currency, which is conduced by blood sugar reacting with the glucose oxidase on the enzyme electrode. And at the same time, the microampere level currency is amplified, processed. Then the results are displayed on LCD. The apparatus are better for measuring blood sugar, and the results are consistent with what the large biochemical instruments get

3 citations

Journal Article
TL;DR: A new multiscale morphological edge detection algorithm that utilizes the noiseproof feature of larger scale elements to restrain the noise, and to utilize the allocation feature of smallerscale elements to trace and detect the edges is proposed to compromise the merits of different scale elements.
Abstract: Edges detection of brain magnetic resonance images is an important image processing work for clinical diagnosis of brain diseases, and it is an essential pre-processing step in medical image segmentation and 3-D reconstruction. Differential operators can’t filter the noise effective, and common morphological edge detection operation blurs the edge of image. This paper represents a new multiscale morphological edge detection algorithm. To utilize the noiseproof feature of larger scale elements to restrain the noise, and to utilize the allocation feature of smaller scale elements to trace and detect the edges, multiscale synthetic weighted method is proposed to compromise the merits of different scale elements. The experimental results show that the algorithm is effective in detecting the edge of brain magnetic resonance images.

2 citations

Proceedings Article
14 Feb 2007
TL;DR: In this article, the effect of high-intensity focused ultrasound (HIFU) can be correlated with the texture feature of general ultrasound image subtraction (USIS), and the authors used the wavelet decomposition coefficient energy (WDCE) of USIS of the HIFU lesion area to analyze texture features at different temperature.
Abstract: This study tests the hypothesis that the effect of High-Intensity Focused Ultrasound (HIFU) can be correlated with the texture feature of general ultrasound image subtraction (USIS). Porcine muscle was chosen as in-vitro sample. Tissue's ultrasound images and their relative temperature values were caught during experiment. We calculate the wavelet decomposition coefficient energy (WDCE) of USIS of the HIFU lesion area to analysis texture features at different temperature. The statistical results show that WDCE elevates linearly with the temperature especially under 65°C. We still analyzed the WDCE of rotation-invariant subbands. Between 40°C to 65°C, the subband WDCEs elevate linearly with temperature, but they will not change much above 65°C. So we get a conclusion that WDCE can be used as a parameter for estimating the temperature during HIFU treatment and subband WDCEs are helpful to monitor the HIFU effect non-invasively.

Cited by
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Journal ArticleDOI
TL;DR: The quantitative features analyzed express subvisual characteristics of images which correlate with pathogenesis of diseases, and are broadly classified into four categories: intensity, structure, texture/gradient, and wavelet, based on the types of image attributes they capture.

324 citations

Journal ArticleDOI
TL;DR: A comprehensive review of current medical image segmentation methods based on deep learning is provided to help researchers solve existing problems.
Abstract: As an emerging biomedical image processing technology, medical image segmentation has made great contributions to sustainable medical care. Now it has become an important research direction in the field of computer vision. With the rapid development of deep learning, medical image processing based on deep convolutional neural networks has become a research hotspot. This paper focuses on the research of medical image segmentation based on deep learning. First, the basic ideas and characteristics of medical image segmentation based on deep learning are introduced. By explaining its research status and summarizing the three main methods of medical image segmentation and their own limitations, the future development direction is expanded. Based on the discussion of different pathological tissues and organs, the specificity between them and their classic segmentation algorithms are summarized. Despite the great achievements of medical image segmentation in recent years, medical image segmentation based on deep learning has still encountered difficulties in research. For example, the segmentation accuracy is not high, the number of medical images in the data set is small and the resolution is low. The inaccurate segmentation results are unable to meet the actual clinical requirements. Aiming at the above problems, a comprehensive review of current medical image segmentation methods based on deep learning is provided to help researchers solve existing problems.

231 citations

Journal ArticleDOI
TL;DR: Methods adopted for the perinatal brain segmentation methods are reviewed and categorised according to the target population, structures segmented and methodology, and future directions and open challenges for research are discussed.

169 citations

01 Jan 2006
TL;DR: In this paper, a comparative study of edge detection algorithms is presented, which proves that Boie-Cox, ShenCastan and Canny operators are better than Laplacian of Gaussian (LOG), while LOG is better than Prewitt and Sobel in case of noisy image.
Abstract: In this paper, classified and comparative study of edge detection algorithms are presented. Experimental results prove that Boie-Cox, ShenCastan and Canny operators are better than Laplacian of Gaussian (LOG), while LOG is better than Prewitt and Sobel in case of noisy image. Subjective and objective methods are used to evaluate the different edge operators. The morphological filter is more important as an initial process in the edge detection for noisy image and used opening-closing operation as preprocessing to filter noise. Also, smooth the image by first closing and then dilation to enhance the image before the edge operators affect.

163 citations

Journal ArticleDOI
TL;DR: Three modified versions of the conventional moving k-means clustering algorithm are introduced called the fuzzy moving k -means, adaptive moving k'-means and adaptive fuzzyMoving k-Means algorithms for image segmentation application.
Abstract: Image segmentation remains one of the major challenges in image analysis. Many segmentation algorithms have been developed for various applications. Unsatisfactory results have been encountered in some cases, for many existing segmentation algorithms. In this paper, we introduce three modified versions of the conventional moving k-means clustering algorithm called the fuzzy moving k-means, adaptive moving k-means and adaptive fuzzy moving k-means algorithms for image segmentation application. Based on analysis done using standard images (i.e. original bridge and noisy bridge) and hard evidence on microscopic digital image (i.e. segmentation of Sprague Dawley rat sperm), our final segmentation results compare favorably with the results obtained by the conventional k-means, fuzzy c-means and moving k-means algorithms. The qualitative and quantitative analysis done proved that the proposed algorithms are less sensitive with respect to noise. As such, the occurrence of dead centers, center redundancy and trapped center at local minima problems can be avoided. The proposed clustering algorithms are also less sensitive to initialization process of clustering value. The final center values obtained are located within their respective groups of data. This enabled the size and shape of the object in question to be maintained and preserved. Based on the simplicity and capabilities of the proposed algorithms, these algorithms are suitable to be implemented in consumer electronics products such as digital microscope, or digital camera as post processing tool for digital images.

128 citations