A novel image representation method for liver tumor classification

Zeyu Wang, Jian Yang*, Yongchang Zheng, Danni Ai, Likun Xia, Yongtian Wang

*Corresponding author for this work

Research output: Chapter in Book/Report/Conference proceedingConference contributionpeer-review

Abstract

Computer aided diagnosis (CAD) has been important more than ever for accurate diagnosis of liver tumors. The paper presents a novel image representation method for classifying normal livers and livers with tumors. It starts by capturing region of interesting (ROI) for individual livers, on which patches are extracted densely. Histogram of oriented gradients (HOG) and intensity are then extracted as patch features. Taking the feature clustering centers in the training images as coding dictionary, sparse coding is used as a coding scheme for the patch extracted from both train and test images. And an effective image representation is then generated based on bag of features (BOF). In this study, an optimized coding method based on the dictionary elements nearby are utilized, which accelerate the coding procedure. The experimental results demonstrate that the proposed image representation method achieves higher classification rate.

Original languageEnglish
Title of host publicationIET Conference Publications
PublisherInstitution of Engineering and Technology
EditionCP680
ISBN (Electronic)9781785610448
Publication statusPublished - 2015
Event2015 IET International Conference on Biomedical Image and Signal Processing, ICBISP 2015 - Beijing, China
Duration: 19 Nov 2015 → …

Publication series

NameIET Conference Publications
NumberCP680
Volume2015

Conference

Conference2015 IET International Conference on Biomedical Image and Signal Processing, ICBISP 2015
Country/TerritoryChina
CityBeijing
Period19/11/15 → …

Keywords

  • Bag of features
  • Classification
  • Image representation
  • Liver tumor
  • Sparse coding

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