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Ambient acoustic event assistive framework for identification, detection,and recognition of unknown acoustic events of a residence

机译:环境声学事件辅助框架,用于鉴定,检测和识别住所的未知声学事件

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In recent times, Ambient Assisted Living has emerged as Smart Living. Smart living is a subset of ambient intelligence, which uses the latest technologies, intellectual processes, and ambient intelligent methodologies to enable house residents to live independently with a virtual companion 24 × 7. Typically, these residents are highly engrossed in the daily routine activities that they tend to ignore certain acoustic events attributing them to the white noise caused due to tap water leakage, flush water leakage, the acoustics of door opening/closing, cupboard opening/closing, curtain opening/closing, television, shower, radio, chair and many more. These unattended events lead to a waste of critical energy resources such as electricity, water, and gas and may cause accidents in some cases. For the conducted experiments, a customized dataset termed as "unknown-2000" and ESC-50 has been used, which has more than 2000 audio sound classification samples. The customized dataset is used for the conducted experiments, consisting of various length acoustic events ranging from 2 s to 10 s. In the proposed review, we have identified, analyzed, and evaluated resident acoustic events using Librosa machine learning libraries, texture analysis using LBP methodology, LSTM-CNN, SVM, KNN, LSTM, Bi-LSTM, and Decision Tree-based classification approaches. Furthermore, in the proposed approach, based on the conducted rigorous and detailed analysis, we are also envisioning the prospective ways to enhance smart living concepts by proposing a novel Acoustic Event Detection and Classification System. The investigation results validate the success of the proposed approach. The obtained results indicate that the customized version of the LSTM-CNN based classification approach used in the conducted experiment has outperformed all the other customized classification approaches, such as SVM, KNN-based classification, C4.5 decision tree-based classification, LSTM, and Bi-LSTM based classification. The LSTM-CNN based classification model has achieved an average value of approximately 0.77 and a standard deviation of 0.2295. Furthermore, the obtained experiential results show that the proposed approach has produced a good performance in various noisy conditions such as SNRO, SNR3, SNR6, SNR9, SNR12, and SNR15. The system classification accuracy has been enhanced to 77% for various acoustic events of a residence. In the end, a detailed comparison of LBP and without LBP approaches has been carried out, which proves that the combination of LBP and LSTM-CNN classification approach provides better results than without the LBP classification approach. The proposed Ambient Acoustic Event Assistive Framework is a cost-effective alternative due to the use of low-cost microphone sensors in the conducted experiments.
机译:最近,环境辅助生活已经成为聪明的生活。智能生活是环境智能的一部分,它使用最新的技术,智力流程和环境智能方法,使房屋居民能够与虚拟伴侣独立生活24×7.通常,这些居民在日常常规活动中非常普遍存在它们倾向于忽视某些声学事件,将它们归因于由于自来水泄漏,冲洗漏水,橱柜开放式/关闭,橱窗开放,窗帘打开/关闭,电视,淋浴,收音机,椅子和还有很多。这些无人看管的事件导致浪费临界能源资源,如电力,水和天然气,可能会导致某些情况发生意外。对于进行的实验,已使用定制的数据集已被称为“未知-2000”和ESC-50,其具有超过2000个音频声音分类样本。定制的数据集用于进行的实验,包括从2 s到10秒的各种长度声学事件组成。在拟议的审查中,我们使用Librosa机器学习库,使用LBP方法,LSTM-CNN,SVM,KNN,LSTM,BI-LSTM以及基于决策树的分类方法来识别,分析和评估居民声学事件。此外,在提出的方法中,基于进行的严格和详细的分析,我们还设想通过提出新的声学事件检测和分类系统来增强智能生活概念的前瞻性方式。调查结果验证了拟议方法的成功。获得的结果表明,在进行实验中使用的基于LSTM-CNN的分类方法的定制版本已经表现出所有其他定制的分类方法,例如SVM,基于KNN的分类,C4.5决策树的分类,LSTM,和基于Bi-LSTM的分类。基于LSTM-CNN的分类模型已经实现了大约0.77的平均值和0.2295的标准偏差。此外,所获得的体验结果表明,该方法在各种嘈杂的条件下产生了良好的性能,例如Snro,SNR3,SNR6,SNR9,SNR12和SNR15。对于居住的各种声学事件,系统分类准确性已得到增强至77%。最后,已经进行了LBP和没有LBP方法的详细比较,这证明了LBP和LSTM-CNN分类方法的组合提供了比没有LBP分类方法的更好的结果。由于在进行的实验中使用低成本麦克风传感器,所提出的环境声学事件辅助框架是一种经济高效的替代方案。

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