Error Correction Method of Business English Translation Based on Convolutional Neural Network

Dengyi Xiao
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Abstract

In order to correct business English translation errors, this paper puts forward a method of business English translation error correction based on convolutional neural network and English pronunciation feature recognition. The blind convolution network spectrum parameter detection method is used to detect the pronunciation spectrum features of business English translation, and the scalar time series of pronunciation output audio parameter sequence and translated text semantic feature sequence are established. Combined with the noise intensity detection and signal scale decomposition method of business English translation pronunciation audio time series, the detailed signal energy parameters of business English translation pronunciation audio time series are extracted, and the convolution neural network classification method is used to classify the features. The interference component of single audio feature sequence of English translation pronunciation is removed by high-frequency wavelet threshold detection, and the modulation and demodulation of single audio feature sequence of English translation pronunciation are realized by using translation dictionary set and semantic context matching. The spectral analysis and error correction model of business English translation pronunciation audio time series is established, and the output stability of business English translation pronunciation audio time series is detected by threshold detection on each scale. According to the difference between output signal and pronunciation standard signal, the accuracy of English translator is detected and identified. The simulation results show that the accuracy of business English translation error correction with this method is high, the detection performance is good, and the output accuracy of English translators is improved.
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基于卷积神经网络的商务英语翻译纠错方法
为了纠正商务英语翻译错误,本文提出了一种基于卷积神经网络和英语发音特征识别的商务英语翻译纠错方法。采用盲卷积网络频谱参数检测方法检测商务英语翻译的发音频谱特征,建立发音输出音频参数序列的标量时间序列和译文语义特征序列。结合商务英语翻译语音音频时间序列的噪声强度检测和信号尺度分解方法,提取商务英语翻译语音音频时间序列的详细信号能量参数,并采用卷积神经网络分类方法对特征进行分类。通过高频小波阈值检测去除英语翻译语音单音频特征序列的干扰分量,利用翻译字典集和语义上下文匹配实现英语翻译语音单音频特征序列的调制解调。建立了商务英语翻译语音音频时间序列的频谱分析与纠错模型,并在各尺度上通过阈值检测检测商务英语翻译语音音频时间序列的输出稳定性。根据输出信号与发音标准信号的差异,检测和识别英语翻译器的准确性。仿真结果表明,用该方法进行商务英语翻译纠错准确率高,检测性能好,提高了英语翻译人员的输出精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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