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Learnt dictionary based active learning method for environmental sound event tagging

机译:基于学习词典的环境声音事件标记主动学习方法

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摘要

Sound event tagging is a process that adds texts or labels to sound segments based on their salient features and/or annotations. In the real world, since annotating cost is much expensive, tagged sound segments are limited, while untagged sound segments can be obtained easily and inexpensively. Thus, semi-automatic tagging becomes very important, which can assign labels to massive untagged sound segments according to a small number of manually annotated sound segments. Active learning is an effective technique to solve this problem, in which selected sound segments are manually tagged while other sound segments are automatically tagged. In this paper, a learnt dictionary based active learning method is proposed for environmental sound event tagging, which can significantly reduce the annotating cost in the process of semi-automatic tagging. The proposed method is based on a learnt dictionary, as dictionary learning is more adapt to sound feature extraction. Moreover, tagging accuracy and annotating cost are used to measure the performance of the proposed method. Experimental results demonstrate that the proposed method has higher tagging accuracy but requires much less annotating cost than other existing methods.
机译:声音事件标记是根据声音片段的显着特征和/或注释将文本或标签添加到声音片段的过程。在现实世界中,由于注释成本非常昂贵,因此标记的声音片段受到限制,而未标记的声音片段则可以轻松,廉价地获得。因此,半自动标记变得非常重要,它可以根据少量手动注释的声音片段为大量未标记的声音片段分配标签。主动学习是解决此问题的有效技术,在该技术中,手动标记选定的声音片段,同时自动标记其他声音片段。提出了一种基于学习词典的主动学习方法,用于环境声音事件的标注,可以在半自动标注过程中显着降低标注成本。所提出的方法基于学习的字典,因为字典学习更适合于声音特征提取。此外,标签准确性和注释成本用于衡量该方法的性能。实验结果表明,与其他现有方法相比,该方法具有较高的标注精度,但注释成本却低得多。

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