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Using Multimodal Contextual Process Information for the Supervised Detection of Connector Lock Events

机译:使用多模式上下文过程信息进行连接器锁定事件的监督检测

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摘要

The field of sound event detection is a growing sector which has mainly focused on the identification of sound classes from daily life situations. In most cases these sound detection models are trained on publicly available sound databases, up to now, however, they do not include acoustic data from manufacturing environments. Within manufacturing industries, acoustic data can be exploited in order to evaluate the correct execution of assembling processes. As an example, in this paper the correct plugging of connectors is analyzed on the basis of multimodal contextual process information. The latter are the connector's acoustic properties and visual information recorded in form of video files while executing connector locking processes. For the first time optical microphones are used for the acquisition and analysis of connector sound data in order to differentiate connector locking sounds from each other respectively from background noise and sound events with similar acoustic properties. Therefore, different types of feature representations as well as neural network architectures are investigated for this specific task. The results from the proposed analysis show, that multimodal approaches clearly outperform unimodal neural network architectures for the task of connector locking validation by reaching maximal accuracy levels close to 85%. Since in many cases there are no additional validation methods applied for the detection of correctly locked connectors in manufacturing industries, it is concluded that the proposed connector lock event detection framework is a significant improvement for the qualitative validation of plugging operations.
机译:声音事件检测领域是一个正在增长的部门,主要致力于从日常生活情况中识别声音类别。在大多数情况下,到目前为止,这些声音检测模型都是在公开的声音数据库上进行训练的,但是,它们不包括来自制造环境的声学数据。在制造业中,可以利用声学数据来评估组装过程的正确执行。例如,在本文中,将基于多模式上下文过程信息来分析连接器的正确插入。后者是在执行连接器锁定过程时,以视频文件形式记录的连接器的声学特性和视觉信息。光学麦克风首次用于连接器声音数据的采集和分析,以便将连接器锁定声音分别与背景噪声和具有类似声学特性的声音事件区别开来。因此,针对此特定任务研究了不同类型的特征表示以及神经网络体系结构。提出的分析结果表明,在达到连接器锁定验证任务时,多峰方法通过达到接近85%的最大准确度水平,明显优于单峰神经网络体系结构。由于在许多情况下,在制造行业中没有适用于检测正确锁定的连接器的其他验证方法,因此可以得出结论,所提出的连接器锁定事件检测框架是对插接操作进行定性验证的一项重大改进。

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