HBR_platform_matlab

所属分类:模式识别(视觉/语音等)
开发工具:matlab
文件大小:9464KB
下载次数:212
上传日期:2016-02-22 10:09:11
上 传 者xuxieweilai
说明:  人体行为识别,姿势包括跑步,打太极,行走,蹲着,具体很好的识别率
(Identification of human behavior, including running posture, tai chi, walking, squatting, particularly good recognition rate)

文件列表:
HBR_platform_matlab (0, 2016-02-22)
HBR_platform_matlab\batchPictures.m (2444, 2016-01-09)
HBR_platform_matlab\datasets (0, 2016-01-09)
HBR_platform_matlab\genHtmlReport.m (3403, 2016-01-09)
HBR_platform_matlab\getID.m (795, 2016-01-09)
HBR_platform_matlab\getImageN.m (1961, 2016-01-09)
HBR_platform_matlab\getTrainTestSet.m (3823, 2016-01-09)
HBR_platform_matlab\hs_err_pid2828.log (26220, 2016-01-09)
HBR_platform_matlab\huidu.m (1050, 2016-01-13)
HBR_platform_matlab\libsvm-3.18 (0, 2016-02-22)
HBR_platform_matlab\libsvm-3.18\COPYRIGHT (1497, 2016-01-09)
HBR_platform_matlab\libsvm-3.18\cvx (0, 2016-02-22)
HBR_platform_matlab\libsvm-3.18\cvx\builtins (0, 2016-02-22)
HBR_platform_matlab\libsvm-3.18\cvx\builtins\@cvx (0, 2016-02-22)
HBR_platform_matlab\libsvm-3.18\cvx\builtins\@cvxcnst (0, 2016-02-22)
HBR_platform_matlab\libsvm-3.18\cvx\builtins\@cvxcnst\eq.m (768, 2016-01-09)
HBR_platform_matlab\libsvm-3.18\cvx\builtins\@cvxcnst\ge.m (1238, 2016-01-09)
HBR_platform_matlab\libsvm-3.18\cvx\builtins\@cvxcnst\gt.m (1235, 2016-01-09)
HBR_platform_matlab\libsvm-3.18\cvx\builtins\@cvxcnst\le.m (1283, 2016-01-09)
HBR_platform_matlab\libsvm-3.18\cvx\builtins\@cvxcnst\lt.m (1280, 2016-01-09)
HBR_platform_matlab\libsvm-3.18\cvx\builtins\@cvxcnst\ne.m (537, 2016-01-09)
HBR_platform_matlab\libsvm-3.18\cvx\builtins\@cvx\abs.m (2329, 2016-01-09)
HBR_platform_matlab\libsvm-3.18\cvx\builtins\@cvx\blkdiag.m (1110, 2016-01-09)
HBR_platform_matlab\libsvm-3.18\cvx\builtins\@cvx\builtins.m (1565, 2016-01-09)
HBR_platform_matlab\libsvm-3.18\cvx\builtins\@cvx\cat.m (2244, 2016-01-09)
HBR_platform_matlab\libsvm-3.18\cvx\builtins\@cvx\conj.m (469, 2016-01-09)
HBR_platform_matlab\libsvm-3.18\cvx\builtins\@cvx\conv.m (2149, 2016-01-09)
HBR_platform_matlab\libsvm-3.18\cvx\builtins\@cvx\ctranspose.m (812, 2016-01-09)
HBR_platform_matlab\libsvm-3.18\cvx\builtins\@cvx\cumprod.m (3457, 2016-01-09)
HBR_platform_matlab\libsvm-3.18\cvx\builtins\@cvx\cumsum.m (1856, 2016-01-09)
HBR_platform_matlab\libsvm-3.18\cvx\builtins\@cvx\diag.m (1126, 2016-01-09)
HBR_platform_matlab\libsvm-3.18\cvx\builtins\@cvx\disp.m (448, 2016-01-09)
HBR_platform_matlab\libsvm-3.18\cvx\builtins\@cvx\end.m (546, 2016-01-09)
HBR_platform_matlab\libsvm-3.18\cvx\builtins\@cvx\eq.m (768, 2016-01-09)
HBR_platform_matlab\libsvm-3.18\cvx\builtins\@cvx\exp.m (3358, 2016-01-09)
HBR_platform_matlab\libsvm-3.18\cvx\builtins\@cvx\find.m (1498, 2016-01-09)
HBR_platform_matlab\libsvm-3.18\cvx\builtins\@cvx\full.m (382, 2016-01-09)
HBR_platform_matlab\libsvm-3.18\cvx\builtins\@cvx\ge.m (1238, 2016-01-09)
HBR_platform_matlab\libsvm-3.18\cvx\builtins\@cvx\gt.m (1235, 2016-01-09)
HBR_platform_matlab\libsvm-3.18\cvx\builtins\@cvx\hankel.m (1298, 2016-01-09)
... ...

Libsvm is a simple, easy-to-use, and efficient software for SVM classification and regression. It solves C-SVM classification, nu-SVM classification, one-class-SVM, epsilon-SVM regression, and nu-SVM regression. It also provides an automatic model selection tool for C-SVM classification. This document explains the use of libsvm. Libsvm is available at http://www.csie.ntu.edu.tw/~cjlin/libsvm Please read the COPYRIGHT file before using libsvm. Table of Contents ================= - Quick Start - Installation and Data Format - `svm-train' Usage - `svm-predict' Usage - `svm-scale' Usage - Tips on Practical Use - Examples - Precomputed Kernels - Library Usage - Java Version - Building Windows Binaries - Additional Tools: Sub-sampling, Parameter Selection, Format checking, etc. - MATLAB/OCTAVE Interface - Python Interface - Additional Information Quick Start =========== If you are new to SVM and if the data is not large, please go to `tools' directory and use easy.py after installation. It does everything automatic -- from data scaling to parameter selection. Usage: easy.py training_file [testing_file] More information about parameter selection can be found in `tools/README.' Installation and Data Format ============================ On Unix systems, type `make' to build the `svm-train' and `svm-predict' programs. Run them without arguments to show the usages of them. On other systems, consult `Makefile' to build them (e.g., see 'Building Windows binaries' in this file) or use the pre-built binaries (Windows binaries are in the directory `windows'). The format of training and testing data file is:

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