1. 大数据知识工程教育部重点实验室(合肥工业大学),安徽,合肥,230601
2. 合肥工业大学计算机与信息学院,安徽,合肥,230601
3. 智能互联系统安徽省实验室,安徽,合肥,230009
4. 工业安全与应急技术安徽省重点实验室(合肥工业大学),安徽,合肥,230601
5. 大数据知识工程教育部重点实验室(合肥工业大学),安徽,合肥,230601
6. 合肥工业大学计算机与信息学院,安徽,合肥,230601
7. 智能互联系统安徽省实验室,安徽,合肥,230009
8. 工业安全与应急技术安徽省重点实验室(合肥工业大学),安徽,合肥,230601
纸质出版:2021
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苏兆品, 吴张倩, 岳峰, 等. 自然环境背景噪声下基于低维深度特征的手机来源识别[J]. 电子学报, 2021,49(4):637-646.
SU Zhao-pin, WU Zhang-qian, YUE Feng, et al. Source Cell-Phone Identification Under Background Noise Based on Low-Dimensional Deep Features[J]. Acta Electronica Sinica, 2021, 49(4): 637-646.
苏兆品, 吴张倩, 岳峰, 等. 自然环境背景噪声下基于低维深度特征的手机来源识别[J]. 电子学报, 2021,49(4):637-646. DOI: 10.12263/DZXB.20200658.
SU Zhao-pin, WU Zhang-qian, YUE Feng, et al. Source Cell-Phone Identification Under Background Noise Based on Low-Dimensional Deep Features[J]. Acta Electronica Sinica, 2021, 49(4): 637-646. DOI: 10.12263/DZXB.20200658.
基于语音的手机来源识别是近年来多媒体取证领域中的一个研究热点,但已有研究大都局限于纯净语音或人工背景噪声语音.本文以自然环境背景噪声下的手机语音为研究对象,提出一种基于低维深度特征的手机来源识别方法.首先提取对数域的Mel滤波器组系数作为基本的声学特征,然后输入到时间卷积网络中进行训练,进一步提取能够表征语音设备的深度特征,并利用线性判别分析进行降维,去除高维深度特征中的冗余.最后,将得到的低维深度特征输入到支持向量机中进行分类和识别.在47种不同型号手机录制的37600条自然环境背景噪声语音样本库上的测试结果表明,本文所提方法在自然环境背景噪声下具有更优的识别性能,且对不同品牌、相同品牌不同型号、不同样本长度、不同数据集规模和不同采样率都具有很好的适应性.
Identifying cell-phones using recorded speech has become a hot topic in the field of multimedia forensics in recent years. However
most of the existing studies focus on the clean speech or the speech with unnaturally artificial noise. In this paper
the speech with background noise is taken into account and a source cell-phone identification method is presented on the basis of the low-dimensional deep features. First
the logarithmic Mel-filter bank coefficients are extracted as the main acoustic features and input to the temporal convolutional network for training and further extracting the deep features of speech devices. Then
the linear discriminant analysis is used to reduce the size of the high-dimensional deep features and remove the redundancy. Finally
the low-dimensional deep features are used as input to the support vector machine classifier. The experimental results on 47 models of mobile phones and 37600 speech samples with background noise show that the proposed method has better recognition performance and better adaptability to different brands
different models of the same brand
different sampling lengths
different sizes of the dataset
and different sampling rates.
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