面向噪声鲁棒昆虫声学检测:从实验室到温室

Jelto Branding, Dieter von Hörsten, Jens Karl Wegener, Elias Böckmann, Eberhard Hartung
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引用次数: 0

摘要

成功和有效的害虫管理是可持续园艺粮食生产的关键。虽然温室已经允许对其气候参数进行数字监测和控制,但缺乏数字害虫传感器阻碍了数字害虫管理系统的出现。为了关闭控制回路,需要使数字系统能够直接评估温室中不同昆虫种群的状态。本文研究了声学传感器在温室昆虫检测中的可行性。这项研究是基于大量的昆虫声学记录数据集,这些记录是在噪声屏蔽条件下用一系列高质量麦克风录制的。通过将这些无噪声的实验室录音与温室中使用相同设备录制的环境声音混合,模拟了不同的信噪比(SNR)。为了探索这个独特而新颖的数据集的可能性,在这个模拟数据上训练了两个深度学习模型。一个简单的基于谱图的模型代表了与能够处理多通道原始音频数据的模型进行比较的基线。利用数据集的独特可能性,模型在干净数据上进行预训练,并在噪声数据上进行微调。在实验室条件下,结果表明,这两种模型不仅可以利用昆虫飞行的声音,还可以利用昆虫运动时更安静的声音。在模拟现实世界条件下的首次尝试显示了该任务的挑战性和空间滤波的潜力。拟议的培训和评价方法所能进行的分析提供了宝贵的见解,应在今后的工作中加以考虑。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards noise robust acoustic insect detection: from the lab to the greenhouse
Abstract Successful and efficient pest management is key to sustainable horticultural food production. While greenhouses already allow digital monitoring and control of their climate parameters, a lack of digital pest sensors hinders the advent of digital pest management systems. To close the control loop, digital systems need to be enabled to directly assess the state of different insect populations in a greenhouse. The presented article investigates the feasibility of acoustic sensors for insect detection in greenhouses. The study is based on an extensive dataset of acoustic insect recordings made with an array of high-quality microphones under noise-shielded conditions. By mixing these noise-free laboratory recordings with environmental sounds recorded with the same equipment in a greenhouse, different signal-to-noise ratios (SNR) are simulated. To explore the possibilities of this unique and novel dataset, two deep-learning models are trained on this simulation data. A simple spectrogram-based model represents the baseline for a comparison with a model capable of processing multi-channel raw audio data. Making use of the unique possibility of the dataset, the models are pre-trained on clean data and fine-tuned on noisy data. Under lab conditions, results show that both models can make use of not just insect flight sounds but also the much quieter sounds of insect movements. First attempts under simulated real-world conditions showed the challenging nature of this task and the potential of spatial filtering. The analysis enabled by the proposed methods for training and evaluation provided valuable insights that should be considered for future work.
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