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Using Exact Locality Sensitive Mapping to Group and Detect Audio-Based Cover Songs

机译:使用精确的位置敏感映射来分组和检测基于音频的翻唱歌曲

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Cover song detection is becoming a very hot research topic when plentiful personal music recordings or performance are released on the Internet. A nice cover song recognizer helps us group and detect cover songs to improve the searching experience. The traditional detection is to match two musical audio sequences by exhaustive pairwise comparisons. Different from the existing work, our aim is to generate a group of concatenated feature sets based on regression modeling and arrange them by indexing-based approximate techniques to avoid complicated audio sequence comparisons. We mainly focus on using Exact Locality Sensitive Mapping(ELSM) to join the concatenated feature sets and soft hash values. Similarity-invariance among audio sequence comparison is applied to define an optimal combination of several audio features. Soft hash values are pre-calculated to help locate searching range more accurately. Furthermore, we implement our algorithms in analyzing the real audio cover songs and grouping and detecting a batch of relevant cover songs embedded in large audio datasets.
机译:当Internet上发布大量个人音乐录音或表演时,翻唱歌曲检测正成为一个非常热门的研究主题。出色的翻唱歌曲识别器可帮助我们对翻唱歌曲进行分组和检测,以改善搜索体验。传统的检测是通过详尽的成对比较来匹配两个音乐音频序列。与现有工作不同,我们的目标是基于回归建模生成一组串联的特征集,并通过基于索引的近似技术对其进行排列,以避免复杂的音频序列比较。我们主要集中在使用精确局部敏感映射(ELSM)来连接级联的特征集和软散列值。音频序列比较之间的相似性不变性可用于定义多个音频特征的最佳组合。预先计算软哈希值,以帮助更准确地定位搜索范围。此外,我们在分析真实音频翻唱歌曲,分组和检测嵌入在大型音频数据集中的一批相关翻唱歌曲的过程中实现了我们的算法。

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