基于卷积神经网络的图像增强和双随机模型的实现提高识别算法的准确性

V. E. Dementyiev, N. Andriyanov, K. K. Vasilyiev
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引用次数: 6

摘要

本文提出了在参考图像不足的情况下,利用卷积神经网络提高图像模式识别效率的方法。提出了利用各种图像变换来生成新图像,增加训练样本量的方法。特别提出了缩放、加噪、模糊等方法。除了标准的图像转换之外,它还应该通过使用双重随机模型来呈现模式来增加数据库。此外,还注意到在训练中使用正则化的必要性。对两个卷积神经网络的识别结果进行了比较,这两个卷积神经网络仅在初始数据的神经元数量上有所不同。结果表明,通过大量增强训练的网络与双随机模型生成的图像相结合,可以提供最高的识别精度。
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Use of Images Augmentation and Implementation of Doubly Stochastic Models for Improving Accuracy of Recognition Algorithms Based on Convolutional Neural Networks
The article proposes methods for increasing the efficiency of pattern recognition in images using convolutional neural networks in conditions of insufficient reference images. It is proposed to use various kinds of image transformations to generate new images and increase the training sample volume. In particular, methods of scaling, adding noise, blurring, etc. are proposed. In addition to standard image transformations, it is supposed to increase the database by presenting patterns using a doubly stochastic model. In addition, the need for the use of regularization in training is noted. The recognition results are compared for two convolutional neural networks that differ only in the number of neurons for different initial data. It is shown that the highest recognition accuracy is provided by a network trained on a large number of augmentations in combination with images generated by a doubly stochastic model.
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