休斯顿蟾蜍和小龙虾蛙呼叫检测的LSTM和GRU体系结构性能分析与评价

Shafinaz Islam, Damian Valles, M. Forstner
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引用次数: 1

摘要

音频信号分析在生物领域的应用越来越突出,主要应用于检测休斯顿蟾蜍和小龙虾蛙等濒危或受威胁物种。德克萨斯州立大学和德克萨斯农工大学的研究人员正在开展一个项目,以拯救这些物种,并了解它们数量下降的原因。目前,研究人员正在使用一种自动记录设备(ARD), Toadphone 1,这是一种专为休斯顿蟾蜍呼叫检测而设计的嵌入式解决方案。然而,该设备的软件解决方案在识别高假阳性率的蟾蜍呼叫方面取得了有限的成功。本文利用改进的软件解决方案对现有的ARD进行了实验,该方案能够检测休斯敦蟾蜍和小龙虾蛙的叫声,并降低了假阳性率。以长短期记忆(LSTM)和门控循环单元(gru)为分类器,利用39个带δ和δ - δ系数的Mel-Frequency倒谱系数(MFCCs)和16个频谱子带质心(ssc)作为音频特征,设计了6个语音识别实验。结果表明,LSTM作为分类器具有39个MFCCs音频特征,20%的验证分割率对休斯敦蟾蜍和小龙虾蛙的叫声检测精度最高。该体系结构的训练准确率为84.7%,验证准确率为82.05%,测试准确率为84.2%,其中对休斯顿蟾蜍叫声的测试准确率为91.4%,对小龙虾蛙叫声的测试准确率为77.1%。
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Performance Analysis and Evaluation of LSTM and GRU Architectures for Houston toad and Crawfish frog Call Detection
Audio signal analysis has become prominent in biological domains toward applications in detecting endangered or threatened species like Houston toad and Crawfish frog. Researchers at Texas State University and Texas A&M University are working on a project to rescue these species and understanding the causes of their decline. Currently the researchers are using an Automated Recording Device (ARD), Toadphone 1, an embedded solution designed for only Houston toad call detection. However, this device's software solution has shown limited success in identifying toad calls consequent of high false-positive rates. This paper experimented with a modified software solution for existing ARD, which is capable of detecting Houston toad and Crawfish frog calls with decreased false-positive rates. Six experiments to detect the calls were designed by using thirty-nine Mel-Frequency Cepstral Coefficients (MFCCs) with delta and delta-delta coefficients and sixteen Spectral Sub-band Centroids (SSCs) as audio features within Long Short-Term Memory (LSTM) and Gated Recurrent Units (GRUs) as the classifiers. Results show that LSTM as the classifier with thirty-nine MFCCs audio features, and a 20% validation split produces the highest accuracy for detecting Houston toad and Crawfish frog calls. This architecture has gained 84.7% training, 82.05% validation accuracy, and 84.2% test accuracy with 91.4% test accuracy on Houston toad call and 77.1% on Crawfish frog call.
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