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基于声学信号的雏鸭性别鉴定。

Sex identification of ducklings based on acoustic signals.

机构信息

College of Mathematics Informatics, South China Agricultural University, Guangzhou 510642, China; Key Laboratory of Smart Agricultural Technology in Tropical South China, Ministry of Agriculture and Rural Affairs, Guangzhou 510642, China.

College of Mathematics Informatics, South China Agricultural University, Guangzhou 510642, China; Key Laboratory of Smart Agricultural Technology in Tropical South China, Ministry of Agriculture and Rural Affairs, Guangzhou 510642, China.

出版信息

Poult Sci. 2024 Jun;103(6):103711. doi: 10.1016/j.psj.2024.103711. Epub 2024 Apr 6.

Abstract

Sex identification of ducklings is a critical step in the poultry farming industry, and accurate sex identification is beneficial for precise breeding and cost savings. In this study, a method for identifying the sex of ducklings based on acoustic signals was proposed. In the first step, duckling vocalizations were collected and an improved spectral subtraction method and high-pass filtering were applied to reduce the influence of noise. Then, duckling vocalizations were automatically detected by using a double-threshold endpoint detection method with 3 parameters: short-time energy (STE), short-time zero-crossing rate (ZCR), and duration (D). Following the extraction of Mel-Spectrogram features from duckling vocalizations, an improved Res2Net deep learning algorithm was used for sex classification. This algorithm was introduced with the Squeeze-and-Excitation (SE) attention mechanism and Ghost module to improve the bottleneck of Res2Net, thereby improving the model accuracy and reducing the number of parameters. The ablative experimental results showed that the introduction of the SE attention mechanism improved the model accuracy by 2.01%, while the Ghost module reduced the number of model parameters by 7.26M and the FLOPs by 0.85G. Moreover, this algorithm was compared with 5 state-of-the-art (SOTA) algorithms, and the results showed that the proposed algorithm has the best cost-effectiveness, with accuracy, recall, specificity, number of parameters, and FLOPs of 94.80, 94.92, 94.69, 18.91M, and 3.46G, respectively. After that, the vocalization detection score and the average confidence strategy were used to predict the sex of individual ducklings, and the accuracy of the proposed model reached 96.67%. In conclusion, the method proposed in this study can effectively detect the sex of ducklings and serve as a reference for automated sex identification of ducklings.

摘要

鸭苗的性别鉴定是家禽养殖业中的关键步骤,准确的性别鉴定有利于精确养殖和节约成本。本研究提出了一种基于声学信号的鸭苗性别鉴定方法。首先,采集鸭苗叫声,采用改进的谱减法和高通滤波减少噪声影响。然后,采用具有 3 个参数的双阈值端点检测方法自动检测鸭苗叫声:短时能量(STE)、短时过零率(ZCR)和时长(D)。从鸭苗叫声中提取梅尔频谱特征后,采用改进的 Res2Net 深度学习算法进行性别分类。该算法引入了 Squeeze-and-Excitation(SE)注意力机制和 Ghost 模块,改进了 Res2Net 的瓶颈,从而提高了模型精度,减少了参数数量。消融实验结果表明,SE 注意力机制的引入将模型精度提高了 2.01%,而 Ghost 模块将模型参数数量减少了 7.26M,FLOPs 减少了 0.85G。此外,该算法与 5 种最先进的(SOTA)算法进行了比较,结果表明,所提出的算法具有最佳的成本效益,准确率、召回率、特异性、参数数量和 FLOPs 分别为 94.80%、94.92%、94.69%、18.91M 和 3.46G。然后,使用叫声检测得分和平均置信度策略预测个体鸭苗的性别,所提出模型的准确率达到 96.67%。综上所述,本研究提出的方法可以有效地检测鸭苗的性别,为鸭苗的自动性别鉴定提供参考。

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