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相关教师 |
个人资料
- 院部/部门:机电工程学院
- 性别:男
- 电子邮箱:wgr@suda.edu.cn
- 专业技术职务:
- 办公地址:机电工程学院
- 毕业院校:南京理工大学
- 邮编:
教育经历
工作经历
个人简介
翁桂荣,男,1963,教授,1985年毕业南京理工大学,从事图像处理、生物信息等方面的科学研究,共发表(SCI、EI)论文八十多篇。
2016年来,主要研究的方向为不均匀性图像分割,共发表了四十多篇SCI论文,二十多篇SCI论文为一作或通讯作者,SCI高被引论文二篇。
目前已经在《Knowledge-Based Systems》(一区 ToP)、《Expert Systems With Applications》 (一区 ToP, 三篇)、《Signal Processing》(一区 ToP,二篇)、《Computers and Mathematics with Applications》,《Neurocomputing》,《Engineering Applications of Artificial Intelligence》,《Applied Mathematical Modelling》等共发表了ToP论文十多篇(一作或通讯作者)。
另有多篇(一作或通讯作者)发表在二区《Digital Signal Processing》、《Signal Processing: Image Communication》上。
社会职务
研究领域
图像处理、数据处理、神经网络。
关于图像分割:
图像分割:基于区域图像分割算法的兴起已经十多年了,图像分割特别是医学影像经常出现灰度不均匀现象,因此,分割仍然困难。
当前图像分割的热点有二个:一是偏场矫正理论--传统方法;二是用深度学习方法,此模型需要一个强大的数据库(几万-十万张同类的图库),阿里的马云进入此领域不久并取得有效成果(冠脉MR image 分割)。
目前(2018-2020)我们研究用下面的偏场矫正理论对图像进行分割:
对于图像分割中的灰度不均匀性问题,我们认为,可以将观察到的图像I(x)描述成一种合成图像模型,该模型将灰度不均匀性分解为图像的一个分量。我们可以将灰度不均匀性与真实图像内稟成分(intrinsic component)特性的乘法模型。因此,图像可以被建模为:
I(x)=J(x)*b(x)+n(x)(1)
其中,J是真实图像,b是灰度不均匀的分量,n是附加噪声。
假定b偏场(或阴影图像)为缓慢变化的(如X-ray image, MR image),且真实图像J反映了图像对象的内稟(intrinsic)物理特性,因此,在局部区域内,可以将J(X)假定为拟合常数。
计算出公式中的b(x)及J(x)的最佳估计值,就能找出目标对象的轮廓线。
但是,由于是b*J是乘法模型,在局部区域内,计算偏场b及拟合常数J需要大量的运行开销(大量的卷积运算),另外,其模型对光照不均、较强噪声、弱信号等是比较敏感的。
我们的创新方法是:预先在迭代计算前,快速找出局部区域的拟合偏场b的估计值by或者拟合常数J的估计值Jy,这样b*J就转换为by*J或b*Jy模型。新的模型就成为一种加性形式,大大简化了计算开销,另外预估计值如果有误差,模型会通过另一个参数自行调整,使得总误差趋于零(I-by*J-->0或I-b*Jy-->0)。通过我们前期研究,目前找到局部区域模糊C聚类估计出by的方法,解决了光照不均、较强噪声、弱信号对分割的影响,并发表在Neurocomputing,2019等国际刊物上。但我们认为还可以进一步提高其效率及鲁棒性,例如找出高效的by计算方法,还有如何计算估计值Jy的方法等。
另外一个问题,传统的主动轮廓模型中的长度项及规则项严重影响系统的鲁棒性,特别是长度项,因此,我们提出创新方法来改善之,部分验证已经发表在Signal Processing,2019等刊物上。长度项的功能是平滑轮廓线及消除虚假的小目标,保证轮廓线有效到达分割目标边界,我们提出用类似于局部区域滤波方法达到此目的。而规则项的功能是保持轮廓线在过零处的有足够的敏感性,同时其他区域保持一定的距离并符号相反,目前我们已经设计出几种函数满足其要求,但要实验去证明其有效性。
例如:冠动脉, 心脏, MR image,Ultrasound image, X-ray image, Fluorescence image 等。



1、Bin Dong, Ri Jin, Guirong Weng * . Active contour model based on local bias field estimation for image segmentation [J]. Signal Processing: Image Communication.(SCI 二区). https://doi.org/10.1016/j.image.2019.07.001. (2018年九月入学的硕士研究生,2019年5月投稿,7月录用并正式发表)Volume 78, 2019, Pages 187-199.
2、Ri Jin, Guirong Weng *. A robust active contour model driven by pre-fitting bias correction and optimized fuzzy c-means algorithm for fast image segmentation[J]. Neurocomputing (SCI 二区 Top ,2019年4月投稿,6月录用并在线发表). Volume 359, 24, 2019, Pages 408-419. DOI:10.1016/j.neucom.2019.06.019.
3、Dong Bin,Weng Guirong. Active contour model driven by Self Organizing Maps for image segmentation,Expert Systems With Applications, 177 (2021) 114948,SCI 一区 ToP.
2020年,我们研究加性偏场矫正理论对图像进行分割(首次提出):
对于图像分割中的灰度不均匀性问题,我们认为,可以将观察到的图像i(x)=logI(x)描述成一种合成图像模型,该模型将灰度不均匀性分解为图像的一个分量。我们可以将灰度不均匀性与边结构的反射图像加法模型。因此,图像可以被建模为:
i(x)=r(x)+b(x)+n(x) (2)
其中,r是边的反射图像,b是加性灰度不均匀的分量,n是附加噪声。
1、Weng Guirong, Dong Bin. A Level Set Method Based on Additive Bias Correction for Image Segmentation. Expert Systems With Applications, 2021.115633. SCI 一区 ToP。
开授课程
- 1、数字图像处理,研究生,2020年2月-2020年6月,15人,54
数字图像处理、电子技术基础(模电、数电)
科研项目
论文
- 1、一种自适应初始轮廓的水平集演化方法的研究,电子学报,Ei ,2017,翁桂荣 ,苏州大学,朱云龙,钱森,翁桂荣* ,苏州大学, 2017. 45.11, 2728-2733
- 2、Robust active contours for fast image segmentation,ELECTRONICS LETTERS,SCI ,2016,Ding Keyan,Soochow University,Weng Guirong,Weng Guirong* ,Soochow University,29th September 2016 Vol. 52 No. 20 pp. 1687–1688
- 3、 Active contours driven by region-scalable fitting and optimized Laplacian of Gaussian energy for image segmentation,Signal Processing,SCI 一区 Top ,2017,Ding Keyan,Soochow University,Linfang Xiao,Weng Guirong,Weng Guirong* ,Soochow University,134, 224–233
- 4、Active Contours driven by Local Pre-Fitting Energy for Fast Image Segmentation with Intensity Inhomogeneity ,Pattern Recognition Letters,SCI ,2017,Ding Keyan,Soochow University,Weng Guirong,Weng Guirong * ,Soochow University,104:29-36
- 5、 Level set evolution driven by optimized area energy term for image segmentation ,Optik,SCI ,2018,Zhang Xinyu ,Soochow University,Weng Guirong,Weng Guirong * ,Soochow University,168 , 517–532
- 6、K-means clustering-based active contour model for fast image segmentation,Journal of Electronic Imaging ,SCI ,2018,Guo Yu ,Soochow University,Weng Guirong,Weng Guirong * ,Soochow University,27(6) 063013,1-11
- 7、 Active contour model based on fuzzy c-means for image segmentation,Electronics Letters ,SCI ,2019,Jin Ri,Soochow University,Weng Guirong,Weng Guirong * ,Soochow University,55(2019).84-86
- 8、A robust active contour model driven by fuzzy c-means energy for fast image segmentation,Digital Signal Processing ,SCI 二区,2019,Jin Ri,Soochow University,Weng Guirong,Weng Guirong *,Soochow University,90(2019)100–109
- 9、Active contours driven by adaptive and fuzzy c-means energy for fast image segmentation,Signal Processing ,SCI 一区 Top ,2019,Jin Ri,Soochow University,Weng Guirong,Weng Guirong * ,Soochow University,2019. 163, 1-10
- 10、Active contour model based on local bias field estimation for imagesegmentation. ,Signal Processing: Image Communication. ,SCI 二区 ,2019 ,Dong Bin ,Soochow University,Jin Ri,Weng Guirong,Weng Guirong * ,Soochow University,78 (2019) 187-199
- 11、A robust active contour model driven by pre-fitting bias correction and optimized fuzzy c-means algorithm for fast image segmentation,Neurocomputing ,SCI 二区 Top ,2019 ,Jin Ri,Soochow University,Weng Guirong,Weng Guirong * ,Soochow University,359 (2019) 408–419
- 12、Active contour model based on improved fuzzy c-means algorithm and adaptive functions,Computers and Mathematics with Applications,SCI 二区 Top ,2019,Jin Ri,Soochow University,Weng Guirong,Weng Guirong* ,Soochow University,78(2019) 3678-3691
- 13、基于自适应符号函数的主动轮廓模型,软件学报, EI,2019,翁桂荣,苏州大学 ,何志勇 ,翁桂荣* ,苏州大学 ,2019,30(12):3892-3906
- 14、Robust active contours driven by order-statistic filtering energy for fast image segmentation,Knowledge-Based Systems,SCI 一区 ToP ,2020,Weng Guirong,Soochow University,Yan Xin,Weng Guirong * ,Soochow University,197 (2020):1-10
- 15、Active contours driven by order-statistic filtering and coherence-enhancing diffusion filter for fast image segmentation,Journal of Electronic Imaging,SCI ,2020.4,Yan Xin ,Soochow University,Jin Ri , Weng Guirong, Weng Guirong *,Soochow University,29(2), 023012:1-21
- 16、Active contour model driven by Self Organizing Maps for image segmentation ,Expert Systems With Applications, SCI 一区 ToP , 2021.3 , Dong Bin ,Soochow University,Weng Guirong ,Jin Ri , Weng Guirong * ,Soochow University,177 (2021) 114948
- 17、Active contour model with local pre-fitting bias estimation for fast image segmentation,J. Electron. Imaging,SCI ,2021.4 , Lei Yu, Soochow University,Weng Guirong ,Weng Guirong * , Soochow University,30(2), 023025 (2021)
- 18、A robust hybrid active contour model based on pre-fitting bias fieldcorrection for fast image segmentation ,Signal Processing: Image Communication,SCI 二区 ,2021.6, Lei Yu,Soochow University,Weng Guirong ,Weng Guirong * ,Soochow University,2021,116351
- 19、A new active contour model driven by pre-fitting bias field estimation and clustering technique for image segmentation,Engineering Applications of Artificial Intelligence, SCI 二区 ToP ,2021.6,Weng Guirong,Soochow University,Dong Bin,Guirong Weng* ,Soochow University,104(2021)104299
- 20、A Level Set Method Based on Additive Bias Correction for Image Segmentation,Expert Systems With Applications, SCI 一区 ToP ,2021,Weng Guirong,Soochow University,Dong Bin,Lei Yu,Weng Guirong * ,Soochow University,2021.115633
- 21、Hybrid active contour model driven by optimized local pre-fitting image energy for fast image segmentation,Applied Mathematical Modelling, SCI 二区 ToP ,2022 ,Yan Xin,Soochow University,Weng Guirong ,Weng Guirong * ,Soochow University,Vol.101, January, 586-599.
- 22、An active contour model based on local pre-piecewise fitting image,Optik,SCI ,2021,Chen Yang,Soochow University,Weng Guirong ,Weng Guirong * ,Soochow University,248 (2021) 168130
- 23、An active contour model algorithm combined with anisotropic diffusion filtering and global pre-fitting energy,Optik,SCI ,2022.1,Wu Zongshan,Soochow University,Weng Guirong ,Weng Guirong * ,Soochow University,253 (2022) 168606
- 24、Active contour model based on local Kullback–Leibler divergence for fast image segmentation,Engineering Applications of Artificial Intelligence, SCI 二区 ToP ,2023.6 ,Yang Chengxin ,Soochow University,Weng Guirong ,Weng Guirong* ,Soochow University,2023,123
- 25、Active contour model based on pre- additive bias field fitting image,Signal Processing: Image Communication,SCI ,2025 ,Chen Yang,Soochow University,Weng Guirong,Weng Guirong * ,Soochow University,139(2025) 117404
科研成果
荣誉及奖励
招生信息
硕士研究生
