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A Houston Toad Call Detection Initial Approach Using Gated Recurrent Units for Conservational Efforts

机译:使用门控循环单元进行保护工作的休斯顿蟾蜍呼叫检测初始方法

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Conservation management of endangered amphibians requires efficient and consistent detection. Consequently, detection of species using automatic animal voice detection from audio recordings is a topic of interest in bioacoustics. This is necessary for amphibian population stewardship as well as assessing the health of those natural systems. The Houston Toad is an endangered chorusing amphibian species, and researchers of the Biology Department at Texas State University are working on a project to prevent its extinction. The researchers' initial approach is an Automated Recording Device (ARD), Toadphone-1, which is an embedded solution. It has shown limited success in identifying toad calls. If a species is not Houston Toad but has a frequency spectrum close to Houston Toad, then Toadphone-1 falsely identifies it as a Houston Toad. Hence, the current ARD solution produces high false-positives. This paper experimented with a modified software solution for existing ARD using 39 Mel-Frequency Cepstral Coefficients (MFCCs) with delta and delta-delta coefficients as audio features and Gated Recurrent Units (GRUs) as a classifier to detect Houston Toad. Results show that this experimented software solution produces 98.82% training accuracy and 97.50% validation accuracy. Test accuracy for detecting Houston Toad is 88.57%, which is approximately 20% greater than the accuracy presented by the existing software solution of Toadphone-1.
机译:濒危两栖动物的保护管理需要有效且一致的检测。因此,使用生物音频中的动物声音自动检测来进行物种检测是生物声学领域的一个重要课题。这对于两栖动物种群管理以及评估这些自然系统的健康状况是必要的。休斯顿蟾蜍是濒临灭绝的两栖类物种,德克萨斯州立大学生物系的研究人员正在研究防止其灭绝的项目。研究人员的最初方法是自动录音设备(ARD),Toadphone-1,这是一种嵌入式解决方案。在识别蟾蜍呼叫中显示出有限的成功。如果某个物种不是休斯顿蟾蜍,但其频谱接近休斯顿蟾蜍,则Toadphone-1错误地将其标识为休斯顿蟾蜍。因此,当前的ARD解决方案会产生较高的假阳性。本文针对现有ARD使用改良的软件解决方案进行了实验,使用39个Mel-频率倒谱系数(MFCC),Δ和Δ-delta系数作为音频特征以及门控循环单位(GRU)作为分类器来检测Houston Toad。结果表明,该经过实验的软件解决方案可产生98.82%的训练准确度和97.50%的验证准确度。用于检测Houston Toad的测试准确度为88.57%,比现有Toadphone-1软件解决方案提供的准确度高约20%。

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