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A CNN-Based Mosquito Classification Using Image Transformation of Wingbeat Features

机译:基于CNN的蚊子分类,使用Wingbeat特征的图像变换

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In this paper, a classification of mosquito's specie is performed using mosquito wingbeats samples obtained by optical sensor. Six world-wide representative species of mosquitos, which are Aedes aegypti, Aedes albopictus, Anopheles arabiensis, Anopheles gambiae and Culex pipiens, Culex quinquefasciatus, are considered for classification. A total of 60,000 samples are divided equally in each specie mentioned above. In total, 25 audio feature extraction algorithms are applied to extract 39 feature values per sample. Further, each audio feature is transformed to a color image, which shows audio features presenting by different pixel values. We used a fully connected neural networks for audio features and a convolutional neural network (CNN) for image dataset generated from audio features. The CNN-based classifier shows 90.75% accuracy, which outperforms the accuracy of 87.18% obtained by the first classifier using directly audio features.
机译:在本文中,使用光学传感器获得的蚊子翼展样品进行蚊子的物种分类。 六个全球蚊虫代表品种,艾丽斯Arabictus,Anopheles Arabiensis,Anopheles Gambiae和Culex Pipiens,Culex Quinquasciatus,被认为是分类。 在上述每种物种中,总共60,000个样品分别划分。 总共25个音频特征提取算法用于每个样本提取39个特征值。 此外,每个音频特征被转换为彩色图像,其示出了由不同像素值呈现的音频特征。 我们使用了从音频特征产生的图像数据集的音频功能和卷积神经网络(CNN)的完全连接的神经网络。 基于CNN的分类器的精度为90.75%,精度优于第一个分类器使用的直接音频功能的87.18%的准确性。

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