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Identifying disturbed habitats: A new method from acoustic indices

机译:识别干扰的栖息地:来自声学指数的新方法

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Monitoring and preventing changes in ecosystems is one of the most difficult challenges for biologists. Currently, soundscape analysis (the analysis of acoustic sounds emitted by the ecosystems) have been accepted as a technique that allows assessment of the biodiversity in natural landscapes. To measure the quality of habitats using recordings, acoustic indices have been developed. These indices are divided into alpha indices (within-group indices) and beta indices (between-group indices). Alpha acoustic indices attempt to represent different attributes of a habitat (e.g., evenness, richness, and heterogeneity), unlike beta acoustic indices that focus on estimating dissimilarity between communities. However, there is not a single index that can abstract all the components from a complex biological system in order to characterize habitats. Furthermore, acoustic indices exhibit patterns along the day that hinder the direct analyzing of habitats. In this study, we go beyond the strategy of choosing a particular index, providing a methodology that includes an integration of several alpha acoustic indices. This integration is performed using classification methods (multilayer neural network and one class support vector machine) that allow characterizing and identifying predefined habitat prototypes (mature forest, secondary growth, and pasture). An accuracy of 0,89 +/- 0,01 was obtained using this methodology to classify these three habitats with different degree of disturbance. An additional experiment were performed to validate the methodology and prove that works a more finite resolution (identification of three forests). The results of the methodology represent the contribution of this study: the integration of the acoustic indices to identify types of habitats and a new monitoring complementary tool, which alerts if new samples taken in these habitats start to be distant to the prototype habitat behaviors.
机译:监测和预防生态系统的变化是生物学家最困难的挑战之一。目前,Soundscape分析(生态系统发出的声音分析)被接受作为一种技术,允许评估自然景观中的生物多样性。为了测量使用录音的栖息地质量,已经开发了声学指标。这些指数分为Alpha Indices(集团内指数)和Beta Indices(在组之间指数之间)。 alpha声学指数试图代表栖息地的不同属性(例如,即使,均匀,丰富性和异质性),与测试版声学指数不同,专注于估计社区之间的异化。然而,没有一个索引可以抽出来自复杂生物系统的所有组件,以表征栖息地。此外,声学指数沿当天表现出妨碍栖息地的直接分析的那一天的图案。在这项研究中,我们超出了选择特定指标的策略,提供包括若干alpha声学指标的集成的方法。使用分类方法(多层神经网络和一类支持向量机)来执行该集成,该分类方法允许表征和识别预定义的栖息地原型(成熟林,二次生长和牧场)。使用该方法获得0,89 +/- 0,01的精度,以分类这三种栖息地具有不同程度的干扰。进行额外的实验以验证方法,并证明作品更具有限分辨率(鉴定三林)。该方法的结果代表了本研究的贡献:声学指标的整合识别栖息地类型和新的监控互补工具,如果在这些栖息地中采取的新样本开始远离原型栖息地行为。

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