IRLGMLJul 9, 2014

Identifying Cover Songs Using Information-Theoretic Measures of Similarity

arXiv:1407.2433v325 citations
Originality Incremental advance
AI Analysis

This addresses the problem of identifying cover songs for music information retrieval, with incremental improvements in similarity measures.

The paper tackles cover song detection by comparing discrete and continuous information-theoretic similarity measures, finding that continuous approaches outperform discrete ones and achieving state-of-the-art performance on the Million Song Dataset.

This paper investigates methods for quantifying similarity between audio signals, specifically for the task of of cover song detection. We consider an information-theoretic approach, where we compute pairwise measures of predictability between time series. We compare discrete-valued approaches operating on quantised audio features, to continuous-valued approaches. In the discrete case, we propose a method for computing the normalised compression distance, where we account for correlation between time series. In the continuous case, we propose to compute information-based measures of similarity as statistics of the prediction error between time series. We evaluate our methods on two cover song identification tasks using a data set comprised of 300 Jazz standards and using the Million Song Dataset. For both datasets, we observe that continuous-valued approaches outperform discrete-valued approaches. We consider approaches to estimating the normalised compression distance (NCD) based on string compression and prediction, where we observe that our proposed normalised compression distance with alignment (NCDA) improves average performance over NCD, for sequential compression algorithms. Finally, we demonstrate that continuous-valued distances may be combined to improve performance with respect to baseline approaches. Using a large-scale filter-and-refine approach, we demonstrate state-of-the-art performance for cover song identification using the Million Song Dataset.

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