SMOOTHING IN MAGNETIC RESONANCE IMAGE ANALYSIS AND A HYBRID

This thesis will focus on applying smoothing splines to magnetic resonance
image (MRI) analysis. Some additional work on support vector machine with
a hybrid loss function will be discussed.

数据挖掘研究院


We apply smoothing splines to both the structural MRI and functional MRI.
For the structural MRI, we t thin plate splines to overlapping blocks of the image
with different configurations of knots. The optimal configurations are found
by the generalized cross validation with a constant factor (Luo and Wahba,
1997). The tted splines with the optimal con gurations are then blended to
get a smoothed image of the brain. Thresholds are found along the way with
k-means algorithm and are blended as well. By thresholding the blended image
we obtained, we get the boundaries between gray matter, white matter, cerebrospinal
uid, and others. The combination of smoothing and thresholding gives us very good results in terms of segmentation. 数据挖掘论坛


For the functional magnetic resonance image analysis, we propose a partial
spline model for the model fitting and hypothesis testing. Simulation are done
to test the theoretical properties of the model. It appears that the partial spline
model can compete with the commonly used smoothing+GLM paradigm.
A support vector machine with a new hybrid loss is studied in the thesis.
We propose a loss function that is a hybrid of the hinge loss and the logistic loss, with the aim to achieve the nice properties of these two loss functions, i.e.,
giving sparse solutions and being able to estimate the conditional probabilities
at the same time. Our results and theoretical derivation show that the new loss
function has the properties we expected and serves as a nice loss function for
classi cation as well.
数据挖掘研究院

数据挖掘论坛

  数据挖掘论坛

资料全文下载

[数据挖掘专家] [数据挖掘研究院] [数据挖掘论坛] [数据挖掘实验室]
上一篇:Magnetic Resonance Image Segmentation with Thin Plate Spline
下一篇:A Class of Graphs where Ranking Spanning Trees and Forests t
最新评论共有 0 位网友发表了评论 , 查看所有评论
发表评论( 不能超过250字,需审核,请自觉遵守互联网相关政策法规。 )
匿名?
数据挖掘网站导航 数据挖掘论坛导航
  • 数据挖掘工具
  • 数据挖掘论坛
  • DataCruncher - Cognos
  • MineSet - MathSoft
  • Intelligent Miner - GainSmarts
  • Sqlserver - SAS - Clementine
  • CART - Weka - WizSoft
  • NeuroShell - ModelQuest
  • data mining tools - Darwin
  • 数据挖掘交友
  • 数据挖掘博客
  • 数据挖掘工具
  • 数据挖掘资源
  • 数据挖掘技术算法
  • 数据挖掘相关期刊、会议
  • 研究院联盟合作专区
  • 数据挖掘基础与相关技术
  • 数据挖掘厂商与就业
  • 数据挖掘研究者乐园
  • 知名厂商数据挖掘工具资料
  • 国内数据挖掘实验室
  • Foreign Data Mining Lab
  • 热点关注
  • 视音频信息自动标引与检索技术
  • CBIR:基于内容的图像检索指导
  • 基于内容的图像检索中的相关反馈研究
  • Magnetic Resonance Image Segmentation wi
  • Studying Recommendation Algorithms by Gr
  • 基于贝叶斯分类器的图像检索相关反馈算法
  • 基于内容图像检索的若干技术研究
  • Metadata Generation and Retrieval of Geo
  • Learning from User Behavior in Image Ret
  • SMOOTHING IN MAGNETIC RESONANCE IMAGE AN
  • 论坛最新话题
  • Foundations of Statistical Natural Langu
  • Game Theory meet Data Mining: A Recent P
  • System Building: How does it help or hin
  • 数据挖掘与Clementine培训
  • 新手报到
  • 求 SASEM 客户流失预测分析
  • 数据挖掘工程师/搜索研究院—北京——无线
  • 数据挖掘入门介绍(如何着手数据挖掘)
  • Information Overload Survey Results
  • The INEX 2005 Workshop on Element Retrie
  • 相关资讯
  • Learning from User Behavior in Image Ret
  • Studying Recommendation Algorithms by Gr
  • A Class of Graphs where Ranking Spanning
  • SMOOTHING IN MAGNETIC RESONANCE IMAGE AN
  • Magnetic Resonance Image Segmentation wi
  • Using Multiple Image Representations to
  • Metadata Generation and Retrieval of Geo
  • Graphical Models
  • 视音频信息自动标引与检索技术
  • 基于内容的图像检索中的相关反馈研究
  • 数据挖掘实验室资料
  • 数据挖掘博客地址
  • 数据挖掘实验室网站地址
  • Prepare for Medicare audits by using dat
  • 注册成为SAS用户与爱好者俱乐部会员
  • 水南梅
  • 明日烟
  • 新人报道
  • 下载
  • 厦门服务器托管,450元/月—0592-5177319 高
  • 买空间送域名--0592-5177319 高静