首页> 外国专利> METHOD FOR OPTIMIZING HYPERPARAMETERS OF AUTO-LABELING DEVICE WHICH AUTO-LABELS TRAINING IMAGES FOR USE IN DEEP LEARNING NETWORK TO ANALYZE IMAGES WITH HIGH PRECISION, AND OPTIMIZING DEVICE USING THE SAME

METHOD FOR OPTIMIZING HYPERPARAMETERS OF AUTO-LABELING DEVICE WHICH AUTO-LABELS TRAINING IMAGES FOR USE IN DEEP LEARNING NETWORK TO ANALYZE IMAGES WITH HIGH PRECISION, AND OPTIMIZING DEVICE USING THE SAME

机译:优化用于在深度学习网络中使用自动标签训练图像以分析高精度图像的自动标记设备的超参数的方法,并使用相同的方法来优化设备

摘要

A method for optimizing a hyperparameter of an auto-labeling device performing auto-labeling and auto-evaluating of a training image to be used for learning a neural network is provided for computation reduction and achieving high precision. The method includes steps of: an optimizing device, (a) instructing the auto-labeling device to generate an original image with its auto label and a validation image with its true and auto label, to assort the original image with its auto label into an easy-original and a difficult-original images, and to assort the validation image with its own true and auto labels into an easy-validation and a difficult-validation images; and (b) calculating a current reliability of the auto-labeling device, generating a sample hyperparameter set, calculating a sample reliability of the auto-labeling device, and optimizing the preset hyperparameter set. This method can be performed by a reinforcement learning with policy gradient algorithms.
机译:提供一种用于优化自动标记设备的超参数的方法,该方法对将用于学习神经网络的训练图像进行自动标记和自动评估,以减少计算量并实现高精度。该方法包括以下步骤:优化设备;(a)指示自动标记设备生成具有其自动标签的原始图像和具有其真实和自动标签的验证图像,以将具有其自动标签的原始图像分类为易原始图像和难原始图像,并将验证图像及其自己的真实标签和自动标签分类为易验证图像和难验证图像; (b)计算自动标记设备的当前可靠性,生成样本超参数集合,计算自动标记设备的样本可靠性,并优化预设的超参数集合。该方法可以通过使用策略梯度算法的强化学习来执行。

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