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Fast Query-by-Singing/Humming System That Combines Linear Scaling and Quantized Dynamic Time Warping Algorithm

机译:线性定标和量化动态时间规整算法相结合的快速按唱歌/哼唱查询系统

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We newly propose a query-by-singing/humming (QbSH) system considering both the preclassification and multiple classifier-based method by combining linear scaling (LS) and quantized dynamic time warping (QDTW) algorithm in order to enhance both the matching accuracy and processing speed. This is appropriate for the QbSH of high speed in the huge distributed server environment. This research is novel in the following three ways. First, the processing speed of the QDTW is generally much slower than the LS method. So, we perform the QDTW matching only in case that the matching distance by LS algorithm is smaller than predetermined threshold, by which the entire processing time is reduced while the matching accuracy is maintained. Second, we use the different measurement method of matching distance in LS algorithm by considering the characteristics of reference database. Third, we combine the calculated distances of LS and QDTW algorithms based on score level fusion in order to enhance the matching accuracy. The experimental results with the 2009 MIR-QbSH corpus and the AFA MIDI 100 databases showed that the proposed method reduced the total searching time of reference data while obtaining the higher accuracy compared to the QDTW.
机译:我们结合线性缩放(LS)和量化动态时间规整(QDTW)算法,同时考虑了预分类和基于多分类器的方法,提出了一种单音哼唱查询(QbSH)系统,以提高匹配精度和处理速度。这适用于大型分布式服务器环境中的高速QbSH。该研究在以下三个方面是新颖的。首先,QDTW的处理速度通常比LS方法慢得多。因此,仅在通过LS算法的匹配距离小于预定阈值的情况下,才执行QDTW匹配,从而在保持匹配精度的同时减少了整个处理时间。其次,考虑参考数据库的特点,在LS算法中采用了不同的匹配距离测量方法。第三,我们结合基于分数水平融合的LS和QDTW算法的计算距离,以提高匹配精度。 2009 MIR-QbSH语料库和AFA MIDI 100数据库的实验结果表明,与QDTW相比,该方法减少了参考数据的总搜索时间,同时获得了更高的准确性。

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