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Ability evaluation of a voice activity detection algorithm in bioacoustics: A case study on poultry calls

机译:生物理学中语音活动检测算法的能力评价:家禽呼叫的案例研究

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Poultry is one of the most strategic source of human foods. There have been seen some hopeful signs of bioacoustics application to monitor the health condition of this vital food source. One of the obstacles is that the bird's call is combined with some unvoiced sounds and extracting the calls is not easy, especially when the bird is sick. This research is a report on successful application of some of the features involved in extracting healthy and non-healthy birds' calls from their sound signals. One hundred and twenty birds from two genotypes - Ross and Cobb - were placed in two groups, a control and those challenged with respiratory diseases. They were reared and their sound was recorded daily. The vocal phrases of the recorded audio signals were extracted using the presented algorithm. Results of analysis showed that an increase in age and onset of illness are two factors that cause an error increase. Detection accuracy was calculated at 95% for healthy young birds and 72% for non-healthy birds. A significant part of this error is due to misclassing the calls as non-vocal segments. This meant that 97% of the activities classified as vocal phrases were, in fact, vocal. These results showed that the idea of such an easy-to-implement algorithm could potentially be employed for the coarselevel segmentation of some animal vocalization signals with reliable outputs, which is an essential and primary step in bioacoustics research.
机译:家禽是最战略性的人类食物来源之一。已经看到了一些有希望的生物处理应用迹象,以监测这种重要食物来源的健康状况。其中一个障碍是,鸟的呼叫与一些清晰的声音相结合,提取呼叫并不容易,特别是当鸟类生病时。本研究是一份关于成功应用涉及从其声音信号提取健康和非健康鸟类呼叫的一些特征的报告。来自两个基因型的一百二十只鸟类 - 罗斯和Cobb - 被置于两组,一种控制和呼吸系统疾病的人。他们被养育了,他们的声音每天记录。使用呈现的算法提取录制的音频信号的声音短语。分析结果表明,疾病年龄的增加和疾病发作是两个导致误差增加的因素。检测精度为健康幼鸽的95%计算,非健康鸟类的72%。此错误的重要部分是由于将呼叫误报作为非声音段。事实上,97%的活动归类为声乐短语的活动。这些结果表明,这种易于实现的算法的思想可能用于一些具有可靠输出的一些动物发声信号的Coarselevel分割,这是生物学研究的必要和主要步骤。

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