BeetleID:一个检测瓢虫的Android解决方案

Ricardo Muriel, Noel Pérez, D. Benítez, Daniel Riofrío, G. Ramón, Emilia Peñaherrera, D. Cisneros-Heredia
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引用次数: 0

摘要

本研究通过图像预处理方法和深度学习卷积神经网络模型,开发了一款名为BeetleID的Android手机应用程序来检测瓢虫。图像预处理模块包括三种主要算法:显著性映射、活动轮廓和超像素分割。用2611张瓢虫种类图像集对卷积神经网络进行了五重交叉验证。受试者工作特征评分的准确度为0.92,曲线下面积为0.98。此外,通过移动模拟器Pixel 3a XL和平板电脑Pixel C的平均执行时间和电池消耗指标来评估该应用程序的可行性,分别获得16.32和18.43秒0.07和0.11毫安小时。这些结果证明,所提出的应用程序是一个很好的解决方案,有一些优化问题,为专家准确地检测野生环境中的瓢虫。
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BeetleID: An Android Solution to Detect Ladybird Beetles
In this work, an Android mobile application named BeetleID was developed to detect ladybird beetles through image pre-processing methods and a deep learning convolutional neural network model. The image pre-processing module consists of three main algorithms: saliency map, active contour, and superpixel segmentation. The used convolutional neural network was validated with a 2611 image set of ladybird beetle species with a five-fold cross-validation method. It achieved accuracy and area under the curve of the receiver operating characteristic scores of 0.92 and 0.98, respectively. Furthermore, the application's feasibility was assessed by the mean execution time and battery consumption metrics of mobile emulators, phone Pixel 3a XL and tablet Pixel C, which obtained 16.32 and 18.43 seconds 0.07 and 0.11 milliampere-hour, respectively. These results prove that the proposed application is an excellent solution, with a few optimization issues, for specialists to detect ladybird beetles in wildlife environments accurately.
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