The Enhanced Network Swin-T by CNN on Flow Pattern Recognition for Two-phase Image Dataset with Low Similarity

Jinsong. Zhang, Deling. Wang, Huadan. Hao, Liangwen. Yan
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Abstract

In the two-phase flow experiments with different conditions of materials and process parameters, the collected image dataset with the low similarity and small amount was difficult for the common deep learning algorithms to achieve a high-precision recognition of flow pattern. due to the low extraction capability of global features. In this article, we proposed a new deep learning algorithm to enhance Swin-T network by CNN which combined the advantages of Swin-T network with Dynamic Region-Aware Convolution. The new algorithm retained the window multi-head self-attention mechanism and added the self-attention adjustment module to enhance the extraction of image features and the convergence speed of network. It significantly improved the recognition accuracy of the different flow patterns in the sharp and blurred images. The enhanced network Swin-T by CNN had the high applicability to the classification of image dataset with low similarity and small amount.
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低相似度两相图像数据集的增强型网络 Swin-T
在不同材料条件和工艺参数的两相流实验中,采集到的图像数据集相似度低、数量少,由于全局特征提取能力低,普通深度学习算法难以实现对流动模式的高精度识别。本文结合 Swin-T 网络和动态区域感知卷积的优点,提出了一种新的深度学习算法,通过 CNN 增强 Swin-T 网络。新算法保留了窗口多头自注意机制,并增加了自注意调整模块,提高了图像特征的提取能力和网络的收敛速度。它大大提高了对清晰和模糊图像中不同流动模式的识别准确率。CNN 增强网络 Swin-T 对相似度低、数量少的图像数据集的分类具有很高的适用性。
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