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Comparative Study on Short Time-Frequency and Time Domains for Frog Identification System

机译:青蛙识别系统的短时频和时域比较研究

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Automatic frog sound identification system is one of the useful approaches to assist experts in identifying frog species and to replace manual techniques claimed to be costly and time consuming. However, to execute an automatic system in noisy environment due to background noises is a challenging task. Instead of depending on physical observation procedure to identify the particular species, this study proposes an automated frog identification system based on bioacoustics signal analysis. Experimental studies of 15 species of frogs are used in this study. These calls are then corrupted by 20dB 10dB and 5dB in different stationary and nonstationary noises. The calls are segmented with three different techniques which are Sinusoidal Modeling (SM), combination of Short Time Energy (STE) and Short Time Average Zero Crossing Rate (STAZCR) (STE+STAZCR) and combination of Energy (E) and Zero Crossing Rate (ZCR) (E+ZCR). A syllable feature extraction method i.e. mel-frequency cepstrum coefficients (MFCC) employed to extract the segmented signal. Subsequently, k nearest neighbor (kNN) are employed in order to evaluate the performance of the identification system. Two experiments have been experimented to compare the performace of SM, E+ZCR and STE+ZTAZCR. The classification performance for three techniques are found to be 90.330/0, 93.340/0 and 93.21% for the SM, E+ZCR and STE+ZTAZCR, respectively.
机译:自动青蛙声音识别系统是帮助专家识别青蛙种类并取代声称昂贵且费时的手动技术的有用方法之一。但是,由于背景噪声而在嘈杂的环境中执行自动系统是一项艰巨的任务。本研究提出了一种基于生物声学信号分析的青蛙自动识别系统,而不是依靠物理观察程序来识别特定物种。本研究使用了15种青蛙的实验研究。然后,在不同的固定噪声和非固定噪声中,这些呼叫被20dB,10dB和5dB破坏。使用三种不同的技术对呼叫进行分段,这些技术是正弦建模(SM),短时能量(STE)和短时平均零交叉率(STAZCR)(STE + STAZCR)的组合以及能量(E)和零交叉率的组合(ZCR)(E + ZCR)。一种音节特征提取方法,即用于提取分段信号的梅尔频率倒谱系数(MFCC)。随后,采用k最近邻居(kNN)来评估识别系统的性能。已经进行了两个实验以比​​较SM,E + ZCR和STE + ZTAZCR的性能。三种技术的分类性能分别为SM,E + ZCR和STE + ZTAZCR,分别为90.330 / 0、93.340 / 0和93.21%。

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