A Study of the Application of an Average Energy Entropy Method for the Endpoint Extraction of Frog Croak Syllables

Q4 Agricultural and Biological Sciences Taiwan Journal of Forest Science Pub Date : 2012-06-01 DOI:10.7075/TJFS.201206.0177
Shan-Chih Hsieh, Wen-Ping Chen, Wen-Chih Lin, Fu-Shan Chou, J. Lai
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引用次数: 4

Abstract

【Summary】 Energy-based endpoint detection is commonly used in time domain analyses of speech segments of extracted signals to reduce the amount of computation required. However, this approach may extract incorrect speech segments due to interference by noise, which can significantly impair its recognition ability when analyzing sound files recorded in the wild. In contrast, entropy-based endpoint detection performs better in terms of noise suppression. Unfortunately, background noise that has a non-stationary frequency distribution causes drastic fluctuations in entropy values of silent segments, and weakens endpoint detection. This paper proposes using average energy entropy (AEE) endpoint detection to address these issues, and compares the AEE method with 3 other endpoint detection methods-energy-based, zero-crossing rate, and entropy-based detection methods. In experiments on frog voice-print recognition, 18 types of frog croaks recorded from the wild were analyzed, and the results revealed that the AEE method had the optimal endpoint extraction capability; and when used in concert with the linear predicative cepstral coefficients, Mel-frequency cepstrum coefficients with dynamic time warping algorithm, the AEE capability for recognition was optimized.
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平均能量熵法在蛙叫音节端点提取中的应用研究
【摘要】基于能量的端点检测通常用于对提取的语音片段进行时域分析,以减少计算量。然而,这种方法可能会由于噪声的干扰而提取不正确的语音片段,在分析野外录制的声音文件时,会严重影响其识别能力。相比之下,基于熵的端点检测在噪声抑制方面表现更好。不幸的是,具有非平稳频率分布的背景噪声会导致静止段的熵值剧烈波动,从而削弱端点检测。本文提出使用平均能量熵(AEE)端点检测方法来解决这些问题,并将AEE端点检测方法与基于能量的端点检测方法、基于过零率的端点检测方法和基于熵的端点检测方法进行比较。在青蛙声纹识别实验中,对野外记录的18种蛙叫声进行了分析,结果表明,AEE方法具有最佳的端点提取能力;当与线性预测倒谱系数、mel -频率倒谱系数和动态时间规整算法配合使用时,优化了AEE的识别能力。
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来源期刊
Taiwan Journal of Forest Science
Taiwan Journal of Forest Science Agricultural and Biological Sciences-Forestry
CiteScore
0.20
自引率
0.00%
发文量
0
期刊介绍: The Taiwan Journal of Forest Science is an academic publication that welcomes contributions from around the world. The journal covers all aspects of forest research, both basic and applied, including Forest Biology and Ecology (tree breeding, silviculture, soils, etc.), Forest Management (watershed management, forest pests and diseases, forest fire, wildlife, recreation, etc.), Biotechnology, and Wood Science. Manuscripts acceptable to the journal include (1) research papers, (2) research notes, (3) review articles, and (4) monographs. A research note differs from a research paper in its scope which is less-comprehensive, yet it contains important information. In other words, a research note offers an innovative perspective or new discovery which is worthy of early disclosure.
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