基于堆叠BiLSTM - CNN的多标签无人机声音分类

D. Utebayeva, Manal Alduraibi, L. Ilipbayeva, Yelmurat Temirgaliyev
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引用次数: 4

摘要

最近,利用声学数据检测无人机引起了研究人员的兴趣,因为它比其他传统方法更便宜。利用声学特征可以对无人机进行二值分类,并且可以识别无人机是否有载荷。在限制和拥挤区域检测附加载荷的无人机被认为是一种有效的保护系统。本文考虑了采用LSTM-CNN架构的多标签无人机声音分类任务。提出的结构由堆叠双向LSTM和CNN组成,它们是通过无人机声音短期功率谱(mfccc)的表示来学习的。我们的实验结果表明,将堆叠BiLSTM和CNN结合使用比单独使用这些架构具有更高的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stacked BiLSTM - CNN for Multiple label UAV sound classification
Recently the detection of drones using acoustic data has attracted the interest of researchers, because it is less expensive than other traditional methods. By using acoustic signature we can perform binary classification of UAVs, moreover we can identify if the drone has a load or not. Detection of UAVs with an additional load in the restricted and crowded areas is considered as an effective protection system. This paper considers Multiple label UAV sound classification task using LSTM-CNN architecture. The proposed architecture is composed of Stacked Bidirectional LSTM and CNN, which were learned on representations of the short-term power spectrum of UAV sounds (MFCCs). The results of our experiment show higher accuracy by using a combination of Stacked BiLSTM and CNN rather than using these architectures separately.
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