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Algorithms for Speeding-Up the Deep Neural Networks For Detecting Plant Disease

机译:加快用于检测植物病害的深层神经网络的算法

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In designing an artificial network, different parameters such as activation functions, hyper-parameters, etc. are considered. Dealing with large number of parameters and also the functions that are expensive for evalualtion are very hard tasks. In this case, it is logical to find methods that results in smaller number of evaluations and improvements in performance. There are various techniques for multiobjective Bayesian optimization in deep learning structure. S-metric selection efficient global optimization (SMS-EGO) and DIRECT are one of the many techniques for multiobjective Bayesian optimization. In this paper, SMS-EGO and DIRECT techniques are applied to deep learning model and the average number of evaluations of each objective including time and error are investigated. For training and validating the deep network, a number of images present various diseases in leaves are provided from Plant Village data set. The simulation results show that by using SMSEGO technique, performance is improved and average time per iteration is faster.
机译:在设计人工网络时,应考虑不同的参数,例如激活函数,超参数等。处理大量参数以及对评估昂贵的功能是非常艰巨的任务。在这种情况下,找到能够减少评估次数并提高性能的方法是合乎逻辑的。深度学习结构中有多种用于多目标贝叶斯优化的技术。 S度量选择有效的全局优化(SMS-EGO)和DIRECT是用于多目标贝叶斯优化的许多技术之一。本文将SMS-EGO和DIRECT技术应用于深度学习模型,并研究了每个目标的平均评估次数,包括时间和误差。为了训练和验证深层网络,从“植物村”数据集中提供了许多表示叶片中各种病害的图像。仿真结果表明,通过使用SMSEGO技术,可以提高性能,并缩短每次迭代的平均时间。

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