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Towards Retraining of Machine Learning Algorithms: An Efficiency Analysis Applied to Smart Agriculture

机译:探测机器学习算法:应用于智能农业的效率分析

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This paper compares the efficiency of state-of-the-art machine learning algorithms used to detect an object in an image. A comparison between a deep learning algorithm such as the VGG-16 and a well-tuned random forest algorithm using classical image analysis parameters is presented. To estimate the efficiency, the classification performances like AUC, precision, recall and computation time of the algorithm retraining process are used. The experimental set-up shows that a well-tuned random forest algorithm is equal to, or better than, the deep learning approach and increases the speed of the retraining process by a factor of around 400.
机译:本文比较了用于检测图像中的对象的最先进的机器学习算法的效率。 介绍了使用经典图像分析参数的VGG-16和调谐随机林算法等深度学习算法的比较。 为了估算效率,使用算法再掠从过程的AUC,精度,召回和计算时间等分类性能。 实验设置表明,经过良好调整的随机森林算法等于或优于深度学习方法,并将刷新过程的速度提高到左右400倍。

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