Title :
Efficient Index-Based Audio Matching
Author :
Kurth, Frank ; Müller, Meinard
Author_Institution :
Res. Establ. for Appl. Scenice, Res. Inst. for Commun., Inf. Process. & Ergonomics, Wachtberg, Germany
Abstract :
Given a large audio database of music recordings, the goal of classical audio identification is to identify a particular audio recording by means of a short audio fragment. Even though recent identification algorithms show a significant degree of robustness towards noise, MP3 compression artifacts, and uniform temporal distortions, the notion of similarity is rather close to the identity. In this paper, we address a higher level retrieval problem, which we refer to as audio matching: given a short query audio clip, the goal is to automatically retrieve all excerpts from all recordings within the database that musically correspond to the query. In our matching scenario, opposed to classical audio identification, we allow semantically motivated variations as they typically occur in different interpretations of a piece of music. To this end, this paper presents an efficient and robust audio matching procedure that works even in the presence of significant variations, such as nonlinear temporal, dynamical, and spectral deviations, where existing algorithms for audio identification would fail. Furthermore, the combination of various deformation- and fault-tolerance mechanisms allows us to employ standard indexing techniques to obtain an efficient, index-based matching procedure, thus providing an important step towards semantically searching large-scale real-world music collections.
Keywords :
audio databases; audio recording; audio signal processing; database indexing; information retrieval; audio database; audio identification; audio indexing; audio matching; chroma features; music interpretation; music recordings; music retrieval; spectral deviations; work identification; Audio databases; Audio recording; Digital audio players; Fault tolerance; Indexing; Large-scale systems; Music information retrieval; Noise robustness; Nonlinear distortion; Signal processing algorithms; Audio indexing; audio matching; chroma features; music retrieval; musical interpretation; work identification;
Journal_Title :
Audio, Speech, and Language Processing, IEEE Transactions on
DOI :
10.1109/TASL.2007.911552