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基于特征融合的加权SVM音频隐写分析算法
引用本文:鲜研,潘峰,申军伟.基于特征融合的加权SVM音频隐写分析算法[J].网络安全技术与应用,2014(9):45-46.
作者姓名:鲜研  潘峰  申军伟
作者单位:武警工程大学电子技术系,陕西710086
摘    要:针对隐写分析中特征维数过高的问题,提出一种特征加权支持向量机音频隐写分析算法.利用特征相关性对原始特征进行优化选择,利用增益比率法计算特征权重,提出了改进特征加权支持向量机.与常用的C-SVM进行的对比实验表明,该方法能够有效提高检测率,降低时间复杂度.

关 键 词:音频隐写分析  特征融合  特征相关性  加权  增益比率法  支持向量机

Based on feature fusion weighted SVM audio steganographic analysis algorithm
Xian Yan,Pan Feng,Shen Junwei.Based on feature fusion weighted SVM audio steganographic analysis algorithm[J].Net Security Technologies and Application,2014(9):45-46.
Authors:Xian Yan  Pan Feng  Shen Junwei
Affiliation:Xian Yan, Pan Feng, Shen Junwei
Abstract:in view of the characteristics of high dimension problems, put forward a feature weighted support vector machine ( SVM ) audio steganographic analysis algorithm.Using correlation characteristics of original features optimized choice, using the gain ratio method to calculate weight characteristics, a feature weighted support vector machine ( SVM ) is presented.With the commonly used C - SVM through the contrast experiments show that this method can effectively increase the detection rate, reduce the time complexity.
Keywords:audio steganographic analysis  Feature fusion  Characteristics of correlation  Weighted  Gain ratio method  Support vector machine ( SVM )
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