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An investigation of the usability of sound recognition for source separation of packaging wastes in reverse vending machines

机译:声音识别在反向自动售货机中包装废物源分离中的可用性研究

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摘要

In this study, we investigate the usability of sound recognition for source separation of packaging wastes in reverse vending machines (RVMs). For this purpose, an experimental setup equipped with a sound recording mechanism was prepared. Packaging waste sounds generated by three physical impacts such as free falling, pneumatic hitting and hydraulic crushing were separately recorded using two different microphones. To classify the waste types and sizes based on sound features of the wastes, a support vector machine (SVM) and a hidden Markov model (HMM) based sound classification systems were developed. In the basic experimental setup in which only free falling impact type was considered, SVM and HMM systems provided 100% classification accuracy for both microphones. In the expanded experimental setup which includes all three impact types, material type classification accuracies were 96.5% for dynamic microphone and 97.7% for condenser microphone. When both the material type and the size of the wastes were classified, the accuracy was 88.6% for the microphones. The modeling studies indicated that hydraulic crushing impact type recordings were very noisy for an effective sound recognition application. In the detailed analysis of the recognition errors, it was observed that most of the errors occurred in the hitting impact type. According to the experimental results, it can be said that the proposed novel approach for the separation of packaging wastes could provide a high classification performance for RVMs.
机译:在这项研究中,我们调查了声音识别在反向自动售货机(RVM)中用于包装废物源分离的可用性。为此,准备了配备声音记录机构的实验装置。使用两个不同的麦克风分别录制了由三种物理撞击(例如自由落体,气动撞击和液压破碎)产生的包装废声。为了根据废物的声音特征对废物类型和大小进行分类,开发了基于支持向量机(SVM)和基于隐马尔可夫模型(HMM)的声音分类系统。在仅考虑自由落体冲击类型的基本实验设置中,SVM和HMM系统为两个麦克风提供100%的分类精度。在包括所有三种冲击类型的扩展实验设置中,动态麦克风的材料类型分类准确度为96.5%,电容式麦克风的材料类型分类准确度为97.7%。对废物的材料类型和大小进行分类时,传声器的准确度为88.6%。建模研究表明,对于有效的声音识别应用而言,液压破碎冲击式录音非常嘈杂。在对识别错误的详细分析中,观察到大多数错误发生在击打类型中。根据实验结果,可以说,提出的包装废物分离新方法可以为RVM提供较高的分类性能。

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