登录
首页 » matlab » GLCM-SVM-master

GLCM-SVM-master

于 2020-07-27 发布
0 225
下载积分: 1 下载次数: 3

代码说明:

说明:  支持向量机(Support Vector Machine, SVM)是一类按监督学习(supervised learning)方式对数据进行二元分类的广义线性分类器(generalized linear classifier),其决策边界是对学习样本求解的最大边距超平面(maximum-margin hyperplane)(Support Vector Machine, SVM)

文件列表:

GLCM-SVM-master, 0 , 2019-05-18
GLCM-SVM-master\.gitattributes, 31 , 2019-05-18
GLCM-SVM-master\README.md, 3498 , 2019-05-18
GLCM-SVM-master\assets, 0 , 2019-05-18
GLCM-SVM-master\assets\1555226757177.png, 29571 , 2019-05-18
GLCM-SVM-master\assets\1555226955414.png, 13441 , 2019-05-18
GLCM-SVM-master\src, 0 , 2019-05-18
GLCM-SVM-master\src\GlCM_IP.m, 5146 , 2019-05-18
GLCM-SVM-master\src\SVMdemo.m, 1556 , 2019-05-18
GLCM-SVM-master\src\classifySample, 0 , 2019-05-18
GLCM-SVM-master\src\classifySample\a1.jpg, 19453 , 2019-05-18
GLCM-SVM-master\src\classifySample\a2.jpg, 26864 , 2019-05-18
GLCM-SVM-master\src\classifySample\a3.jpg, 30689 , 2019-05-18
GLCM-SVM-master\src\classifySample\a4.jpg, 12996 , 2019-05-18
GLCM-SVM-master\src\classifySample\b1.jpg, 6564 , 2019-05-18
GLCM-SVM-master\src\classifySample\b2.jpg, 32397 , 2019-05-18
GLCM-SVM-master\src\classifySample\b3.jpg, 4544 , 2019-05-18
GLCM-SVM-master\src\classifySample\b4.jpg, 47966 , 2019-05-18
GLCM-SVM-master\src\contrastShow.m, 168 , 2019-05-18
GLCM-SVM-master\src\demo.m, 4133 , 2019-05-18
GLCM-SVM-master\src\imgFiles, 0 , 2019-05-18
GLCM-SVM-master\src\imgFiles\p1.jpg, 21210 , 2019-05-18
GLCM-SVM-master\src\imgFiles\p2.jpg, 35998 , 2019-05-18
GLCM-SVM-master\src\imgFiles\p3.jpg, 27319 , 2019-05-18
GLCM-SVM-master\src\imgFiles\p5.jpg, 124558 , 2019-05-18
GLCM-SVM-master\src\img_process_fuc.m, 3523 , 2019-05-18
GLCM-SVM-master\src\libsvm, 0 , 2019-05-18
GLCM-SVM-master\src\libsvm\COPYRIGHT, 1497 , 2019-05-18
GLCM-SVM-master\src\libsvm\FAQ.html, 83087 , 2019-05-18
GLCM-SVM-master\src\libsvm\Makefile, 732 , 2019-05-18
GLCM-SVM-master\src\libsvm\Makefile.win, 1136 , 2019-05-18
GLCM-SVM-master\src\libsvm\README, 28644 , 2019-05-18
GLCM-SVM-master\src\libsvm\heart_scale, 27670 , 2019-05-18
GLCM-SVM-master\src\libsvm\java, 0 , 2019-05-18
GLCM-SVM-master\src\libsvm\java\Makefile, 659 , 2019-05-18
GLCM-SVM-master\src\libsvm\java\libsvm.jar, 55185 , 2019-05-18
GLCM-SVM-master\src\libsvm\java\libsvm, 0 , 2019-05-18
GLCM-SVM-master\src\libsvm\java\libsvm\svm.java, 64242 , 2019-05-18
GLCM-SVM-master\src\libsvm\java\libsvm\svm.m4, 63439 , 2019-05-18
GLCM-SVM-master\src\libsvm\java\libsvm\svm_model.java, 868 , 2019-05-18
GLCM-SVM-master\src\libsvm\java\libsvm\svm_node.java, 115 , 2019-05-18
GLCM-SVM-master\src\libsvm\java\libsvm\svm_parameter.java, 1288 , 2019-05-18
GLCM-SVM-master\src\libsvm\java\libsvm\svm_print_interface.java, 87 , 2019-05-18
GLCM-SVM-master\src\libsvm\java\libsvm\svm_problem.java, 136 , 2019-05-18
GLCM-SVM-master\src\libsvm\java\svm_predict.java, 4950 , 2019-05-18
GLCM-SVM-master\src\libsvm\java\svm_scale.java, 8944 , 2019-05-18
GLCM-SVM-master\src\libsvm\java\svm_toy.java, 12269 , 2019-05-18
GLCM-SVM-master\src\libsvm\java\svm_train.java, 8355 , 2019-05-18
GLCM-SVM-master\src\libsvm\java\test_applet.html, 81 , 2019-05-18
GLCM-SVM-master\src\libsvm\matlab, 0 , 2019-05-18
GLCM-SVM-master\src\libsvm\matlab\Makefile, 1240 , 2019-05-18
GLCM-SVM-master\src\libsvm\matlab\README, 9826 , 2019-05-18
GLCM-SVM-master\src\libsvm\matlab\libsvmread.c, 4063 , 2019-05-18
GLCM-SVM-master\src\libsvm\matlab\libsvmread.mexw64, 10752 , 2019-05-18
GLCM-SVM-master\src\libsvm\matlab\libsvmwrite.c, 2341 , 2019-05-18
GLCM-SVM-master\src\libsvm\matlab\libsvmwrite.mexw64, 9728 , 2019-05-18
GLCM-SVM-master\src\libsvm\matlab\make.m, 888 , 2019-05-18
GLCM-SVM-master\src\libsvm\matlab\svm_model_matlab.c, 8205 , 2019-05-18
GLCM-SVM-master\src\libsvm\matlab\svm_model_matlab.h, 201 , 2019-05-18
GLCM-SVM-master\src\libsvm\matlab\svmpredict.c, 9820 , 2019-05-18
GLCM-SVM-master\src\libsvm\matlab\svmpredict.mexw64, 24064 , 2019-05-18
GLCM-SVM-master\src\libsvm\matlab\svmtrain.c, 11818 , 2019-05-18
GLCM-SVM-master\src\libsvm\matlab\svmtrain.mexw64, 62464 , 2019-05-18
GLCM-SVM-master\src\libsvm\python, 0 , 2019-05-18
GLCM-SVM-master\src\libsvm\python\Makefile, 32 , 2019-05-18
GLCM-SVM-master\src\libsvm\python\README, 11908 , 2019-05-18
GLCM-SVM-master\src\libsvm\python\svm.py, 9603 , 2019-05-18
GLCM-SVM-master\src\libsvm\python\svmutil.py, 8695 , 2019-05-18
GLCM-SVM-master\src\libsvm\svm-predict.c, 5536 , 2019-05-18
GLCM-SVM-master\src\libsvm\svm-scale.c, 8539 , 2019-05-18
GLCM-SVM-master\src\libsvm\svm-toy, 0 , 2019-05-18
GLCM-SVM-master\src\libsvm\svm-toy\gtk, 0 , 2019-05-18
GLCM-SVM-master\src\libsvm\svm-toy\gtk\Makefile, 573 , 2019-05-18
GLCM-SVM-master\src\libsvm\svm-toy\gtk\callbacks.cpp, 10308 , 2019-05-18
GLCM-SVM-master\src\libsvm\svm-toy\gtk\callbacks.h, 1765 , 2019-05-18
GLCM-SVM-master\src\libsvm\svm-toy\gtk\interface.c, 6457 , 2019-05-18
GLCM-SVM-master\src\libsvm\svm-toy\gtk\interface.h, 203 , 2019-05-18
GLCM-SVM-master\src\libsvm\svm-toy\gtk\main.c, 398 , 2019-05-18
GLCM-SVM-master\src\libsvm\svm-toy\gtk\svm-toy.glade, 6402 , 2019-05-18
GLCM-SVM-master\src\libsvm\svm-toy\qt, 0 , 2019-05-18
GLCM-SVM-master\src\libsvm\svm-toy\qt\Makefile, 434 , 2019-05-18
GLCM-SVM-master\src\libsvm\svm-toy\qt\svm-toy.cpp, 9744 , 2019-05-18
GLCM-SVM-master\src\libsvm\svm-toy\windows, 0 , 2019-05-18
GLCM-SVM-master\src\libsvm\svm-toy\windows\svm-toy.cpp, 11503 , 2019-05-18
GLCM-SVM-master\src\libsvm\svm-train.c, 8986 , 2019-05-18
GLCM-SVM-master\src\libsvm\svm.cpp, 65129 , 2019-05-18
GLCM-SVM-master\src\libsvm\svm.def, 477 , 2019-05-18
GLCM-SVM-master\src\libsvm\svm.h, 3382 , 2019-05-18
GLCM-SVM-master\src\libsvm\tools, 0 , 2019-05-18
GLCM-SVM-master\src\libsvm\tools\README, 7033 , 2019-05-18
GLCM-SVM-master\src\libsvm\tools\checkdata.py, 2479 , 2019-05-18
GLCM-SVM-master\src\libsvm\tools\easy.py, 2699 , 2019-05-18
GLCM-SVM-master\src\libsvm\tools\grid.py, 15316 , 2019-05-18
GLCM-SVM-master\src\libsvm\tools\subset.py, 3202 , 2019-05-18
GLCM-SVM-master\src\libsvm\windows, 0 , 2019-05-18
GLCM-SVM-master\src\libsvm\windows\libsvm.dll, 259072 , 2019-05-18
GLCM-SVM-master\src\libsvm\windows\libsvmread.mexw64, 14336 , 2019-05-18
GLCM-SVM-master\src\libsvm\windows\libsvmwrite.mexw64, 13312 , 2019-05-18
GLCM-SVM-master\src\libsvm\windows\svm-predict.exe, 212992 , 2019-05-18
GLCM-SVM-master\src\libsvm\windows\svm-scale.exe, 165888 , 2019-05-18

下载说明:请别用迅雷下载,失败请重下,重下不扣分!

发表评论

0 个回复

  • ARzxg
    AR模型,用经典法的自相关法求谱估计,简单实用(AR model, using the classic method of auto-correlation spectral estimation method, simple and practical)
    2009-06-26 10:16:49下载
    积分:1
  • bihuanshuruSVMnixitong
    对一个输入变化的的系统求逆,用SVM拟合逆系统(An input change system inverse fitting with SVM inverse system)
    2012-10-13 10:21:05下载
    积分:1
  • New-folder
    基于Li Xu论文的前两部分代码,包括Stroke和Tone Mapping (The Matlab code works for the algorithm proposed in the paper Combining Sketch and Tone for Pencil Drawing Production)
    2015-04-15 23:05:55下载
    积分:1
  • Polar译码算法集合
    说明:  Polar码的SCL,SC,BP,SCAN译码算法(decoding algorithm of polar code)
    2021-03-18 16:19:20下载
    积分:1
  • bizhangrobot
    说明:  利用人工势场法进行移动机器人的路径规划的matlab程序。包含具体的讲解(Matlab program of path planning of mobile robot using artificial potential field method. Contains specific explanations)
    2020-11-04 09:37:13下载
    积分:1
  • armx
    此函数中详细介绍了如何现代功率谱估计法中的AR模型来妒忌信号的功率谱;(This function is described in detail how modern power spectrum estimation of AR model to envy the power spectrum of the signal )
    2013-12-06 17:01:54下载
    积分:1
  • SVM
    本程序是 用来计算支持向量机的,完全可用!我自己作过实验!()
    2021-05-07 18:40:39下载
    积分:1
  • BakeryGUI
    Bakery purchase app is here. Please use it as simple app
    2014-11-29 16:16:38下载
    积分:1
  • lambert
    gives the initial and final velocities of a trajectory connecting R0 to Rf over a transfer time of dT. This method uses universal variables, from Vallado.
    2013-09-27 00:08:23下载
    积分:1
  • dataset_618531
    包含1593手写体数字0 ~ 9。从semeion.data通过MATLAB semeion.mat,可以直接使用。 每一个行为样本,其中256是手写数字的16×16,在10栏的数字识别标签,例如:如果第一行是1,然后是0号,其次是1,1。等等。 在Matlab的小例子,可以得出每一个数字,一个更好的理解。你想翻转和旋转的是写作的习惯相一致的图像。(Contains 1593 handwritten digit 0~9. from semeion.data by MATLAB semeion.mat, can be used directly. In addition of MATLAB small example, can draw each digital, a better understanding of. The image you want to flip and rotation is consistent with the habit of writing.)
    2013-11-14 13:44:00下载
    积分:1
  • 696516资源总数
  • 106918会员总数
  • 4今日下载