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Design and Implementation of Fast Spoken Foul Language Recognition with Different End-to-End Deep Neural Network Architectures

机译:不同端到端深神经网络架构的快速口语臭语识别的设计与实现

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摘要

Given the excessive foul language identified in audio and video files and the detrimental consequences to an individual’s character and behaviour, content censorship is crucial to filter profanities from young viewers with higher exposure to uncensored content. Although manual detection and censorship were implemented, the methods proved tedious. Inevitably, misidentifications involving foul language owing to human weariness and the low performance in human visual systems concerning long screening time occurred. As such, this paper proposed an intelligent system for foul language censorship through a mechanized and strong detection method using advanced deep Convolutional Neural Networks (CNNs) and Recurrent Neural Networks (RNNs) through Long Short-Term Memory (LSTM) cells. Data on foul language were collected, annotated, augmented, and analysed for the development and evaluation of both CNN and RNN configurations. Hence, the results indicated the feasibility of the suggested systems by reporting a high volume of curse word identifications with only 2.53% to 5.92% of False Negative Rate (FNR). The proposed system outperformed state-of-the-art pre-trained neural networks on the novel foul language dataset and proved to reduce the computational cost with minimal trainable parameters.
机译:鉴于音频和视频文件中识别过多的肮脏语言以及对个人角色和行为的不利后果,内容审查对于从年轻观看者筛选较高曝光内容的年轻观众的亵渎的义务至关重要。虽然实施了手动检测和审查,但这些方法证明了繁琐。不可避免地,由于人类疲惫和人类视觉系统中的长筛选时间,涉及犯规语言的误识别。因此,本文提出了一种通过使用先进的深卷积神经网络(CNNS)和经常性神经网络(RNNS)通过长短期存储器(LSTM)细胞的机械化和强检测方法来智能语言审查方法。收集,注释,增强和分析了关于CNN和RNN配置的开发和评估的犯规。因此,结果表明了建议系统通过报告大量的诅咒词识别,只有2.53%到5.92%的假负率(FNR)。所提出的系统在新颖的犯规数据集上表现出最先进的预先训练的神经网络,并证明是以最小的培训参数降低计算成本。

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