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Feature subset selection for automatically classifying anuran calls using sensor networks

机译:功能子集选择,用于使用传感器网络自动分类无努呼叫

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Anurans (frogs or toads) are commonly used by biologists as early indicators of ecological stress. The reason is that anurans are closely related to the ecosystem. Although several sources of data may be used for monitoring these animals, anuran calls lead to a non-intrusive data acquisition strategy. Moreover, wireless sensor networks (WSNs) may be used for such a task, resulting in more accurate and autonomous system. However, it is essential save resources to extend the network lifetime. In this paper, we evaluate the impact of reducing data dimension for automatic classification of bioacoustic signals when a WSN is involved. Such a reduction is achieved through a wrapper-based feature subset selection strategy that uses genetic algorithm (GA). We use GA to find the subset of features that maximizes the cost-benefit ratio. In addition, we evaluate the impact of reducing the original feature space, when sampling frequencies are also reduced. Experimental results indicate that we can reduce the number of features, while increasing classification rates (even when smaller sampling frequencies of transmission are used).
机译:生物学家通常将无脊椎动物(青蛙或蟾蜍)用作生态压力的早期指标。原因是无核动物与生态系统密切相关。尽管可以使用多种数据源来监视这些动物,但无尾熊的呼叫导致了一种非侵入式数据获取策略。此外,无线传感器网络(WSN)可以用于此类任务,从而获得更准确和自治的系统。但是,至关重要的是节省资源以延长网络寿命。在本文中,我们评估了当涉及到无线传感器网络时,减少数据维度对生物声信号的自动分类的影响。这种减少是通过使用遗传算法(GA)的基于包装的特征子集选择策略实现的。我们使用GA查找可最大化成本效益比的功能子集。此外,当采样频率也降低时,我们评估减小原始特征空间的影响。实验结果表明,我们可以减少特征数量,同时提高分类率(即使使用较小的传输采样频率)。

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