...
首页> 外文期刊>Journal of Computing in Civil Engineering >Advanced Sound Classifiers and Performance Analyses for Accurate Audio-Based Construction Project Monitoring
【24h】

Advanced Sound Classifiers and Performance Analyses for Accurate Audio-Based Construction Project Monitoring

机译:高级声学分类器和性能分析,用于准确基于音频的建筑项目监控

获取原文
获取原文并翻译 | 示例

摘要

Abstract The sounds of work activities and equipment operations at a construction site provide critical information regarding construction progress, task performance, and safety issues. The construction industry, however, has not investigated the value of sound data and their applications, which would offer an advanced approach to unmanned management and remote monitoring of construction processes and activities. For analyzing sounds emanating from construction work activities and equipment operations, which generally have complex characteristics that entail overlapping construction and environmental noise, a highly accurate sound classifier is imperative for data analysis. To establish the robust foundation for sound recognition, analysis, and monitoring frameworks, this research study examines diverse classifiers and selects those that accurately identify construction sounds. Employing nine types of sounds from about 100 sound data originating from construction work activities, we assess the accuracy of 17 classifiers and find that sounds can be classified with 93.16% accuracy. A comparison with deep learning technology has been also provided, obtaining results similar to the best ones of the traditional machine learning methods. The outcomes of this study are expected to help enhance advanced processes for audio-based construction monitoring and safety surveillance by providing appropriate classifiers for construction sound data analyses.
机译:摘要施工现场的工作活动和设备操作的声音提供了有关施工进度,任务绩效和安全问题的关键信息。然而,建筑业尚未调查声音数据及其应用的价值,这将为无人管理和施工过程和活动的远程监控提供先进的方法。为了分析从施工工作活动和设备操作中发出的声音,通常具有复杂的特性,这些特性需要重叠的结构和环境噪声,对于数据分析,高度精确的声音分类器是必不可少的。为了建立声音识别,分析和监测框架的强大基础,该研究研究了各种分类器,并选择准确识别施工声音的分类器。采用源自施工工作活动的大约100个声音数据的九种声音,我们评估了17分类机的准确性,并发现声音可以归类为93.16%的准确性。还提供了与深度学习技术的比较,获得了与最佳传统机器学习方法类似的结果。预计本研究的结果将通过为施工声音数据分析提供适当的分类器来帮助提高基于音频的施工监测和安全监测的先进过程。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号