Most digital audio tampering detection methods based on electrical network frequency (ENF) only utilize the static spatial information of ENF, ignoring the variation of ENF in time series, which limit the ability of ENF feature representation and reduce the accuracy of tampering detection. This paper proposes a new method for digital audio tampering detection based on ENF spatio-temporal features representation learning. A parallel spatio-temporal network model is constructed using CNN and BiLSTM, which deeply extracts ENF spatial feature information and ENF temporal feature information to enhance the feature representation capability to improve the tampering detection accuracy. In order to extract the spatial and temporal features of the ENF, this paper firstly uses digital audio high-precision Discrete Fourier Transform analysis to extract the phase sequences of the ENF. The unequal phase series is divided into frames by adaptive frame shifting to obtain feature matrices of the same size to represent the spatial features of the ENF. At the same time, the phase sequences are divided into frames based on ENF time changes information to represent the temporal features of the ENF. Then deep spatial and temporal features are further extracted using CNN and BiLSTM respectively, and an attention mechanism is used to adaptively assign weights to the deep spatial and temporal features to obtain spatio-temporal features with stronger representation capability. Finally, the deep neural network is used to determine whether the audio has been tampered with. The experimental results show that the proposed method improves the accuracy by 2.12%-7.12% compared with state-of-the-art methods under the public database Carioca, New Spanish.
翻译:以电网频率(ENF)为基础的大多数数字音频篡改检测方法仅使用电子网络频率(ENF)的静态空间信息,忽略了ENF在时间序列中的变异,这限制了ENF地貌表现能力,降低了篡改检测的准确性。本文提出了基于ENF时空特征学习的数码音频篡改检测新方法。使用CNN和BILSTM构建了一个平行的时空网络模型,该模型深度提取了ENF空间地物特征信息和ENF时间特征信息,以提高其特征的显示能力,从而改进ENF的时空特征。为了提取ENF的时序特征,本文首先使用数字音频高精度描述功能,降低了音频检测的准确性。根据ENFF的时空特征,对数字音频变化进行了新的音频变化分析,随后利用了更深的空间和时空数据模型对空间数据进行了更精确性分析,从而进一步测量了CIMLS和空间空间空间数据系统的应用能力。