Title :
Analysis of Minimum Distances in High-Dimensional Musical Spaces
Author :
Casey, Michael ; Rhodes, Christophe ; Slaney, Malcolm
Author_Institution :
Goldsmiths Coll., Dept. of Comput., Univ. of London, London
fDate :
7/1/2008 12:00:00 AM
Abstract :
We propose an automatic method for measuring content-based music similarity, enhancing the current generation of music search engines and recommended systems. Many previous approaches to track similarity require brute-force, pair-wise processing between all audio features in a database and therefore are not practical for large collections. However, in an Internet-connected world, where users have access to millions of musical tracks, efficiency is crucial. Our approach uses features extracted from unlabeled audio data and near-neigbor retrieval using a distance threshold, determined by analysis, to solve a range of retrieval tasks. The tasks require temporal features-analogous to the technique of shingling used for text retrieval. To measure similarity, we count pairs of audio shingles, between a query and target track, that are below a distance threshold. The distribution of between-shingle distances is different for each database; therefore, we present an analysis of the distribution of minimum distances between shingles and a method for estimating a distance threshold for optimal retrieval performance. The method is compatible with locality-sensitive hashing (LSH)-allowing implementation with retrieval times several orders of magnitude faster than those using exhaustive distance computations. We evaluate the performance of our proposed method on three contrasting music similarity tasks: retrieval of mis-attributed recordings (fingerprint), retrieval of the same work performed by different artists (cover songs), and retrieval of edited and sampled versions of a query track by remix artists (remixes). Our method achieves near-perfect performance in the first two tasks and 75% precision at 70% recall in the third task. Each task was performed on a test database comprising 4.5 million audio shingles.
Keywords :
audio signal processing; feature extraction; information retrieval; Internet-connected world; audio features; automatic method; content-based music similarity; features extraction; high-dimensional musical spaces; locality-sensitive hashing; minimum distances; music search engines; musical tracks; optimal retrieval; pair-wise processing; query track; remix artists; retrieval tasks; test database; text retrieval; Audio databases; Current measurement; Data mining; Feature extraction; Internet; Music information retrieval; Performance evaluation; Search engines; Spatial databases; Target tracking; audio shingles; distance distributions; locality-sensitive hashing; matched-filter distance; music similarity;
Journal_Title :
Audio, Speech, and Language Processing, IEEE Transactions on
DOI :
10.1109/TASL.2008.925883