Low dimensional adaptive texture feature vectors from class distance and class difference matrices

被引:27
|
作者
Nielsen, B
Albregtsen, F
Danielsen, HE
机构
[1] Univ Oslo, Dept Informat, N-0316 Oslo, Norway
[2] Norwegian Radium Hosp, Sect Digital Pathol, N-0310 Oslo, Norway
[3] Norwegian Radium Hosp, Sect Digital Pathol, N-0310 Oslo, Norway
[4] Univ Sheffield, Div Genom Med, Sheffield S10 2TN, S Yorkshire, England
关键词
adaptive features; Brodatz textures; class distance matrices; early ovarian cancer; image texture analysis; low dimensionality; pattern classification;
D O I
10.1109/TMI.2003.819923
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
In many popular texture analysis methods, second or higher order statistics on the relation between pixel gray level values are stored in matrices. A high dimensional vector of predefined, nonadaptive features is then extracted from these matrices. Identifying a few consistently valuable features is important, as it improves classification reliability and enhances our understanding of the phenomena that we are modeling. Whatever sophisticated selection algorithm we use, there is a risk of selecting purely coincidental "good" feature sets, especially if we have a large number of features to choose from and the available data set is limited. In a unified approach to statistical texture feature extraction, we have used class distance and class difference matrices to obtain low dimensional adaptive feature vectors for texture classification. We have applied this approach to four relevant texture analysis methods. The new adaptive features outperformed the classical features when applied to the most difficult set of 45 Brodatz texture pairs. Class distance and difference matrices also clearly illustrated the difference in texture between cell nucleus images from two different prognostic classes of early ovarian cancer. For each of the texture analysis methods, one adaptive feature contained most of the discriminatory power of the method.
引用
收藏
页码:73 / 84
页数:12
相关论文
共 50 条
  • [21] Implications of a class of neutrino mass matrices with texture zeros for nonzero θ13
    Kumar, Sanjeev
    PHYSICAL REVIEW D, 2011, 84 (07):
  • [22] Utilizing a class labeling feature in an adaptive Bayesian classifier
    Lynch, RS
    Willett, PK
    SIGNAL PROCESSING, SENSOR FUSION, AND TARGET RECOGNITION X, 2001, 4380 : 488 - 496
  • [23] One Class Classifier Neural Network for Anomaly Detection in Low Dimensional Feature Spaces
    Favarelli, Elia
    Testi, Enrico
    Giorgetti, Andrea
    2019 13TH INTERNATIONAL CONFERENCE ON SIGNAL PROCESSING AND COMMUNICATION SYSTEMS (ICSPCS), 2019,
  • [24] Two-dimensional Meixner Random Vectors of Class ML
    Stan, Aurel I.
    JOURNAL OF THEORETICAL PROBABILITY, 2011, 24 (01) : 39 - 65
  • [25] Generating test cases from class vectors
    Leung, KRPH
    Wong, W
    Ng, JKY
    JOURNAL OF SYSTEMS AND SOFTWARE, 2003, 66 (01) : 35 - 46
  • [26] Prognostic classification of early ovarian cancer based on very low dimensionality adaptive texture feature vectors from cell nuclei from monolayers and histological sections
    Nielsen, B
    Albregtsen, F
    Kildal, W
    Danielsen, HE
    ANALYTICAL CELLULAR PATHOLOGY, 2001, 23 (02): : 75 - 88
  • [27] Class of finite-dimensional matrices with diagonals that majorize their spectrum
    Uhlmann, Jeffrey
    SPECIAL MATRICES, 2023, 11 (01):
  • [28] A Class of Structured High-Dimensional Dynamic Covariance Matrices
    Yang, Jin
    Lian, Heng
    Zhang, Wenyang
    COMMUNICATIONS IN MATHEMATICS AND STATISTICS, 2023,
  • [29] ON THE EMPIRICAL DISTRIBUTION OF EIGENVALUES OF A CLASS OF LARGE DIMENSIONAL RANDOM MATRICES
    SILVERSTEIN, JW
    BAI, ZD
    JOURNAL OF MULTIVARIATE ANALYSIS, 1995, 54 (02) : 175 - 192
  • [30] Isospectral flows on a class of finite-dimensional Jacobi matrices
    Sutter, Tobias
    Chatterjee, Debasish
    Ramponi, Federico A.
    Lygeros, John
    SYSTEMS & CONTROL LETTERS, 2013, 62 (05) : 388 - 394