標題: Local Wavelet Acoustic Pattern: A Novel Time-Frequency Descriptor for Birdsong Recognition
作者: Hsu, Sheng-Bin
Lee, Chang-Hsing
Chang, Pei-Chun
Han, Chin-Chuan
Fan, Kuo-Chin
資訊工程學系
Department of Computer Science
關鍵字: Birdsong recognition;discrete wavelet transform (DWT);vector of locally aggregated descriptors (VLAD)
公開日期: 1-十二月-2018
摘要: Investigating the identity, distribution, and evolution of bird species is important for both biodiversity assessment and environmental conservation. The discrete wavelet transform (DWT) has been widely exploited to extract time-frequency features for acoustic signal analysis. Traditional approaches usually compute statistical measures (e.g., maximum, mean, standard deviation) of the DWT coefficients in each subband independently to yield the feature descriptor, without considering the intersubband correlation. A new acoustic descriptor, called the local wavelet acoustic pattern (LWAP), is proposed to characterize the correlation of the DWT coefficients in different subbands for birdsong recognition. First, we divide a variable-length birdsong segment into a number of fixed-duration texture windows. For each texture window, several LWAP descriptors are extracted. The vector of locally aggregated descriptors (VLAD) is then used to aggregate the set of LWAP descriptors into a single VLAD vector. Finally, principal component analysis (PCA) plus linear discriminant analysis (LDA) are employed to reduce the feature dimensionality for classification purposes. Experiments on two birdsong datasets show that the proposed LWAP descriptor outperforms other local descriptors, including linear predictive coding cepstral coefficients, Mel-frequency cepstral coefficients, perceptual linear prediction cepstral coefficients, chroma features, and prosody features. Furthermore, the proposed LWAP descriptor, followed by VLAD encoding, PCA plus LDA feature extraction, and a simple distance-based classifier, yields promising results that are competitive with those obtained by the state-of-the-art convolutional neural networks.
URI: http://dx.doi.org/10.1109/TMM.2018.2834866
http://hdl.handle.net/11536/148467
ISSN: 1520-9210
DOI: 10.1109/TMM.2018.2834866
期刊: IEEE TRANSACTIONS ON MULTIMEDIA
Volume: 20
起始頁: 3187
結束頁: 3199
顯示於類別:期刊論文