PCANet人眼检测
所属分类:其他
开发工具:matlab
文件大小:10288KB
下载次数:16
上传日期:2020-02-20 20:47:17
上 传 者:
奚山君
说明: PCA人眼检测,检测人眼睁闭状态,判断司机是否疲劳驾驶
(PCA eye detect,detect the state of the eyes of drivers to judge whether the driver is tired)
文件列表:
PCANet人眼检测 (0, 2019-03-01)
PCANet人眼检测\1_pos.jpg (102275, 2019-03-01)
PCANet人眼检测\cut_Img.m (972, 2017-04-29)
PCANet人眼检测\Demo_PCAeye_test.m (1844, 2017-12-02)
PCANet人眼检测\Demo_PCAeye_testeye.m (2425, 2017-12-02)
PCANet人眼检测\Demo_PCAeye_train.m (4674, 2017-04-25)
PCANet人眼检测\drawRectangle.m (964, 2017-04-11)
PCANet人眼检测\face_data.mat (8825, 2017-04-29)
PCANet人眼检测\HashingHist.m (5410, 2017-04-26)
PCANet人眼检测\Liblinear (0, 2017-12-02)
PCANet人眼检测\Liblinear\libsvmread.c (4226, 2011-08-26)
PCANet人眼检测\Liblinear\libsvmread.mexa64 (11225, 2013-09-24)
PCANet人眼检测\Liblinear\libsvmread.mexw64 (10752, 2013-08-25)
PCANet人眼检测\Liblinear\libsvmwrite.c (2254, 2011-08-26)
PCANet人眼检测\Liblinear\libsvmwrite.mexa64 (9463, 2013-09-24)
PCANet人眼检测\Liblinear\libsvmwrite.mexw64 (9216, 2013-08-25)
PCANet人眼检测\Liblinear\linear_model_matlab.c (3726, 2012-04-16)
PCANet人眼检测\Liblinear\linear_model_matlab.h (168, 2008-09-06)
PCANet人眼检测\Liblinear\make.m (910, 2012-10-18)
PCANet人眼检测\Liblinear\Makefile (1764, 2011-05-09)
PCANet人眼检测\Liblinear\predict.c (8629, 2012-10-09)
PCANet人眼检测\Liblinear\predict.mexa64 (66845, 2013-09-24)
PCANet人眼检测\Liblinear\predict.mexw64 (16384, 2013-08-25)
PCANet人眼检测\Liblinear\train.c (10947, 2012-07-20)
PCANet人眼检测\Liblinear\train.mexa64 (68273, 2013-09-24)
PCANet人眼检测\Liblinear\train.mexw64 (58880, 2013-08-25)
PCANet人眼检测\Liblinear\训练后参数与权重.mat (777856, 2017-05-25)
PCANet人眼检测\Liblinear\训练后参数与权重1.mat (2325859, 2017-05-26)
PCANet人眼检测\Liblinear\训练后参数与权重2.mat (97367, 2017-05-25)
PCANet人眼检测\load_train_data.m (1808, 2017-04-29)
PCANet人眼检测\optimal_rec.m (1036, 2017-04-29)
PCANet人眼检测\PCANet_FeaExt.m (1717, 2017-04-26)
PCANet人眼检测\PCANet_train.m (3329, 2017-04-26)
PCANet人眼检测\PCA_FilterBank.m (1586, 2017-04-29)
PCANet人眼检测\PCA_output.m (1565, 2017-04-26)
PCANet人眼检测\Utils (0, 2017-12-02)
PCANet人眼检测\Utils\im2colstep.c (3388, 2009-10-18)
PCANet人眼检测\Utils\im2colstep.m (1341, 2009-08-31)
PCANet人眼检测\Utils\im2colstep.mexa64 (9919, 2013-10-02)
... ...
--------------------------------------------
--- MATLAB/OCTAVE interface of LIBLINEAR ---
--------------------------------------------
Table of Contents
=================
- Introduction
- Installation
- Usage
- Returned Model Structure
- Other Utilities
- Examples
- Additional Information
Introduction
============
This tool provides a simple interface to LIBLINEAR, a library for
large-scale regularized linear classification and regression
(http://www.csie.ntu.edu.tw/~cjlin/liblinear). It is very easy to use
as the usage and the way of specifying parameters are the same as that
of LIBLINEAR.
Installation
============
On Windows systems, pre-built binary files are already in the
directory '..\windows', so no need to conduct installation. Now we
provide binary files only for ***bit MATLAB on Windows. If you would
like to re-build the package, please rely on the following steps.
We recommend using make.m on both MATLAB and OCTAVE. Just type 'make'
to build 'libsvmread.mex', 'libsvmwrite.mex', 'train.mex', and
'predict.mex'.
On MATLAB or Octave:
>> make
If make.m does not work on MATLAB (especially for Windows), try 'mex
-setup' to choose a suitable compiler for mex. Make sure your compiler
is accessible and workable. Then type 'make' to start the
installation.
Example:
matlab>> mex -setup
(ps: MATLAB will show the following messages to setup default compiler.)
Please choose your compiler for building external interface (MEX) files:
Would you like mex to locate installed compilers [y]/n? y
Select a compiler:
[1] Microsoft Visual C/C++ version 7.1 in C:\Program Files\Microsoft Visual Studio
[0] None
Compiler: 1
Please verify your choices:
Compiler: Microsoft Visual C/C++ 7.1
Location: C:\Program Files\Microsoft Visual Studio
Are these correct?([y]/n): y
matlab>> make
On Unix systems, if neither make.m nor 'mex -setup' works, please use
Makefile and type 'make' in a command window. Note that we assume
your MATLAB is installed in '/usr/local/matlab'. If not, please change
MATLABDIR in Makefile.
Example:
linux> make
To use octave, type 'make octave':
Example:
linux> make octave
For a list of supported/compatible compilers for MATLAB, please check
the following page:
http://www.mathworks.com/support/compilers/current_release/
Usage
=====
matlab> model = train(training_label_vector, training_instance_matrix [,'liblinear_options', 'col']);
-training_label_vector:
An m by 1 vector of training labels. (type must be double)
-training_instance_matrix:
An m by n matrix of m training instances with n features.
It must be a sparse matrix. (type must be double)
-liblinear_options:
A string of training options in the same format as that of LIBLINEAR.
-col:
if 'col' is set, each column of training_instance_matrix is a data instance. Otherwise each row is a data instance.
matlab> [predicted_label, accuracy, decision_values/prob_estimates] = predict(testing_label_vector, testing_instance_matrix, model [, 'liblinear_options', 'col']);
-testing_label_vector:
An m by 1 vector of prediction labels. If labels of test
data are unknown, simply use any random values. (type must be double)
-testing_instance_matrix:
An m by n matrix of m testing instances with n features.
It must be a sparse matrix. (type must be double)
-model:
The output of train.
-liblinear_options:
A string of testing options in the same format as that of LIBLINEAR.
-col:
if 'col' is set, each column of testing_instance_matrix is a data instance. Otherwise each row is a data instance.
Returned Model Structure
========================
The 'train' function returns a model which can be used for future
prediction. It is a structure and is organized as [Parameters, nr_class,
nr_feature, bias, Label, w]:
-Parameters: Parameters
-nr_class: number of classes; = 2 for regression
-nr_feature: number of features in training data (without including the bias term)
-bias: If >= 0, we assume one additional feature is added to the end
of each data instance.
-Label: label of each class; empty for regression
-w: a nr_w-by-n matrix for the weights, where n is nr_feature
or nr_feature+1 depending on the existence of the bias term.
nr_w is 1 if nr_class=2 and -s is not 4 (i.e., not
multi-class svm by Crammer and Singer). It is
nr_class otherwise.
If the '-v' option is specified, cross validation is conducted and the
returned model is just a scalar: cross-validation accuracy for
classification and mean-squared error for regression.
Result of Prediction
====================
The function 'predict' has three outputs. The first one,
predicted_label, is a vector of predicted labels. The second output,
accuracy, is a vector including accuracy (for classification), mean
squared error, and squared correlation coefficient (for regression).
The third is a matrix containing decision values or probability
estimates (if '-b 1' is specified). If k is the number of classes
and k' is the number of classifiers (k'=1 if k=2, otherwise k'=k), for decision values,
each row includes results of k' binary linear classifiers. For probabilities,
each row contains k values indicating the probability that the testing instance is in
each class. Note that the order of classes here is the same as 'Label'
field in the model structure.
Other Utilities
===============
A matlab function libsvmread reads files in LIBSVM format:
[label_vector, instance_matrix] = libsvmread('data.txt');
Two outputs are labels and instances, which can then be used as inputs
of svmtrain or svmpredict.
A matlab function libsvmwrite writes Matlab matrix to a file in LIBSVM format:
libsvmwrite('data.txt', label_vector, instance_matrix]
The instance_matrix must be a sparse matrix. (type must be double)
For windows, `libsvmread.mexw***' and `libsvmwrite.mexw***' are ready in
the directory `..\windows'.
These codes are prepared by Rong-En Fan and Kai-Wei Chang from National
Taiwan University.
Examples
========
Train and test on the provided data heart_scale:
matlab> [heart_scale_label, heart_scale_inst] = libsvmread('../heart_scale');
matlab> model = train(heart_scale_label, heart_scale_inst, '-c 1');
matlab> [predict_label, accuracy, dec_values] = predict(heart_scale_label, heart_scale_inst, model); % test the training data
Note that for testing, you can put anything in the testing_label_vector.
For probability estimates, you need '-b 1' only in the testing phase:
matlab> [predict_label, accuracy, prob_estimates] = predict(heart_scale_label, heart_scale_inst, model, '-b 1');
Additional Information
======================
Please cite LIBLINEAR as follows
R.-E. Fan, K.-W. Chang, C.-J. Hsieh, X.-R. Wang, and C.-J. Lin.
LIBLINEAR: A Library for Large Linear Classification, Journal of
Machine Learning Research 9(2008), 1871-1874.Software available at
http://www.csie.ntu.edu.tw/~cjlin/liblinear
For any question, please contact Chih-Jen Lin .
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