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蚊音+: 一种基于深度学习的抗噪模型,可用于从翅膀拍打声中对蚊子进行分类。

MosquitoSong+: A noise-robust deep learning model for mosquito classification from wingbeat sounds.

机构信息

Faculty of ICT, Mahidol University, Nakhon Pathom, Thailand.

Bremen Spatial Cognition Center, University of Bremen, Bremen, Germany.

出版信息

PLoS One. 2024 Oct 30;19(10):e0310121. doi: 10.1371/journal.pone.0310121. eCollection 2024.

Abstract

In order to assess risk of mosquito-vector borne disease and to effectively target and monitor vector control efforts, accurate information about mosquito vector population densities is needed. The traditional and still most common approach to this involves the use of traps along with manual counting and classification of mosquito species, but the costly and labor-intensive nature of this approach limits its widespread use. Numerous previous studies have sought to address this problem by developing machine learning models to automatically identify species and sex of mosquitoes based on their wingbeat sounds. Yet little work has addressed the issue of robust classification in the presence of environmental background noise, which is essential to making the approach practical. In this paper, we propose a new deep learning model, MosquitoSong+, to identify the species and sex of mosquitoes from raw wingbeat sounds so that it is robust to the environmental noise and the relative volume of the mosquito's flight tone. The proposed model extends the existing 1D-CNN model by adjusting its architecture and introducing two data augmentation techniques during model training: noise augmentation and wingbeat volume variation. Experiments show that the new model has very good generalizability, with species classification accuracy above 80% on several wingbeat datasets with various background noise. It also has an accuracy of 93.3% for species and sex classification on wingbeat sounds overlaid with various background noises. These results suggest that the proposed approach may be a practical means to develop classification models that can perform well in the field.

摘要

为了评估蚊媒疾病的风险,并有效地针对和监测病媒控制工作,需要有关蚊虫媒介种群密度的准确信息。传统的、仍然是最常见的方法是使用诱捕器,并结合手动计数和蚊种分类,但这种方法的成本高且劳动强度大,限制了其广泛应用。许多之前的研究都试图通过开发机器学习模型来解决这个问题,这些模型可以根据蚊子的翅膀拍打声自动识别蚊子的种类和性别。然而,很少有研究解决在存在环境背景噪声的情况下进行稳健分类的问题,这对于使该方法实用至关重要。在本文中,我们提出了一种新的深度学习模型 MosquitoSong+,可以从原始的翅膀拍打声中识别蚊子的种类和性别,从而使其对环境噪声和蚊子飞行音的相对音量具有鲁棒性。所提出的模型通过调整其架构并在模型训练期间引入两种数据增强技术来扩展现有的 1D-CNN 模型:噪声增强和翅膀拍打音量变化。实验表明,该新模型具有很好的泛化能力,在几个具有不同背景噪声的翅膀数据集上的物种分类准确率都在 80%以上。它在叠加各种背景噪声的翅膀声音上的物种和性别分类准确率也达到了 93.3%。这些结果表明,所提出的方法可能是开发能够在现场表现良好的分类模型的实用手段。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/81ab/11524479/f2c444da21c6/pone.0310121.g001.jpg

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