skip to main
|
skip to sidebar
Paper Scanner
Wednesday, July 22, 2009
Statistical Geometrical Features for Texture Classification
by
Yan Qiu Chen, Marx S. Nixon and David W. Thomas
This paper simply provides us with 16 features for texture classification. Well... try them in some applications then.
No comments:
Post a Comment
Newer Post
Older Post
Home
Subscribe to:
Post Comments (Atom)
Recent Comments
Loading...
Scanning Areas
ICML 2007
ICML 2006
ICML 2005
NIPS 2007
NIPS 2006
NIPS 2005
CVPR 2007
Paper list
►
2012
(6)
►
July
(1)
►
June
(1)
►
April
(3)
►
February
(1)
►
2011
(22)
►
December
(4)
►
November
(3)
►
June
(9)
►
January
(6)
►
2010
(28)
►
December
(4)
►
November
(5)
►
October
(5)
►
August
(7)
►
July
(2)
►
February
(3)
►
January
(2)
▼
2009
(98)
►
November
(9)
►
October
(1)
►
September
(1)
▼
July
(28)
Efficient Euclidean Projection in Linear Time
On Sampling-based Approximate Spectral Decomposition
Convolutional Deep Belief Networks for Scalable Un...
Evaluating Search Engines by Modeling the Relation...
Herding Dynamical Weights to Learn
Statistical Geometrical Features for Texture Class...
An Efficient Projection for L_{1, infty} Regulariz...
Support Vector Machine Learning for Image Retrieval
Regression by Dependence Minimization and its Appl...
Nonlinear Causal Discovery with Additive Noise Models
Boosting Products of Base Classifiers
Efficient Projections onto the l1-Ball for Learnin...
Discriminative k-Metrics
On Primal and Dual Sparsity of Markov Networks
Large-scale Deep Unsupervised Learning using Graph...
Gradient Descent with Sparsification: An Iterative...
Sparse Higher Order Conditional Random Fields for ...
Curriculum Learning
Graph Construction and b-Matching for Semi-supervi...
Minimum Volume Embedding
Structure Preserving Embedding
Geometric-aware Metric Learning
Probabilistic Dyadic Data Analysis with Local and ...
Information Theoretic Metric Learning
Robust Feature Extraction via Information Theoreti...
A Majorization-Minimization Algorithm for (Multipl...
Information Theoretic Measures for Clustering Comp...
Characteristic Kernels on Groups and Semigroups
►
May
(8)
►
April
(11)
►
March
(11)
►
February
(21)
►
January
(8)
►
2008
(32)
►
December
(8)
►
September
(1)
►
August
(1)
►
July
(1)
►
May
(4)
►
March
(1)
►
February
(3)
►
January
(13)
►
2007
(20)
►
July
(2)
►
May
(4)
►
March
(2)
►
February
(12)
Labels
semi-supervised learning
(21)
kernel
(20)
probabilistic graphical model
(17)
dimension reduction
(13)
SVM
(12)
clustering
(12)
Gaussian process
(11)
manifold learning
(10)
optimization
(10)
bayesian framework
(9)
RBM
(8)
ranking
(8)
computational photography
(7)
deep belief network
(7)
graph embedding
(7)
label propagation
(6)
EM
(5)
LLE
(5)
mixture of experts
(5)
natural language processing
(5)
nonnegative constraints
(5)
topic model
(5)
unsupervised learning
(5)
Dirichlet process
(4)
Fisher discriminant criterion
(4)
MMMF
(4)
Markov chain
(4)
SDP
(4)
compressive sampling
(4)
discriminative model
(4)
independent component analysis
(4)
map/reduce
(4)
maximum margin
(4)
regression
(4)
roughly scanned
(4)
supervised learning
(4)
Bregman divergence
(3)
GMM
(3)
Laplacian Eigenmap
(3)
MCMC
(3)
feature selection
(3)
generative model
(3)
large-scale problem
(3)
multiple-instance learning
(3)
multiple-label learning
(3)
random walk
(3)
sparsity
(3)
spectral analysis
(3)
stochastic gradient descent
(3)
variational approximation
(3)
visualization
(3)
Gibbs sampler
(2)
HMM
(2)
ISOMAP
(2)
LDA
(2)
LTSA
(2)
Markov logic
(2)
belief propagation
(2)
boosting
(2)
cumulative distribution network
(2)
decision tree
(2)
dynamics
(2)
gradient
(2)
graph
(2)
hashing
(2)
independence test
(2)
information theory
(2)
matting
(2)
maximum entropy
(2)
metric learning
(2)
non-parametric Bayesian method
(2)
novel idea
(2)
semidefinite programming
(2)
social network
(2)
transfer learning
(2)
DC programming
(1)
GPU
(1)
HITS
(1)
Hopfield networks
(1)
JFA
(1)
LPP
(1)
MPI
(1)
MRF
(1)
MVU
(1)
Nyström method
(1)
PCA
(1)
PR
(1)
PageRank
(1)
Parzen window
(1)
ROC
(1)
SIGIR
(1)
SRBM
(1)
active learning
(1)
adaptive algorithm
(1)
algorithm
(1)
aspecti mode
(1)
binomial mixture model
(1)
bundle method
(1)
causal inference
(1)
co-training
(1)
collaborative filtering
(1)
consistency
(1)
continuation
(1)
convolutional networks
(1)
density estimation
(1)
distance learning
(1)
duality
(1)
dynamic system
(1)
eccv2008
(1)
ensemble
(1)
expectation maximization
(1)
expectation propagation
(1)
feature extraction
(1)
fixed-point algorithm
(1)
frequentism
(1)
icml
(1)
icml 2006
(1)
information geometry
(1)
kernel selection
(1)
locally adaptive classifier
(1)
logistic regression
(1)
multi-task learning
(1)
multiple-kernel learning
(1)
non-metric methods
(1)
online algorithm
(1)
ordinal regression
(1)
parallel analysis
(1)
portfolio effect
(1)
power-law degree distribution
(1)
preference learning
(1)
product of experts
(1)
quadratic programming
(1)
random graph
(1)
real-time answer
(1)
recommendation system
(1)
regularization
(1)
relational learning
(1)
robust learning
(1)
sentiment analysis
(1)
similarity
(1)
simulated annealing
(1)
small world
(1)
solver
(1)
tangent space
(1)
tensor
(1)
text
(1)
texture
(1)
theoretical science
(1)
transductive learning
(1)
universum
(1)
Scanner
Unknown
tangtang
No comments:
Post a Comment