基于深度可分离残差结构的轻量级尿液沉积物图像识别网络

Zhiyu Qu, Shuwang Cai, Qingbo Ji, Lingjing Xu
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引用次数: 2

摘要

尿沉渣图像尺寸小,分类容易混淆,特征提取困难。提出了一种基于沙漏残差结构和超分辨率图像重构的尿液沉积物图像自动识别方法。首先,对尿沉渣图像进行注释和预处理,生成尿沉渣数据集。然后,利用超分辨率重建技术对小尺寸尿液沉积物图像进行重建,以适应深度学习模型的输入。最后,构建沙漏残差网络,自动提取尿沉渣图像的特征,实现对尿沉渣图像的分类识别。实验结果表明,该方法对13种尿液沉积物图像的识别总体准确率可达99.05%。这种方法在保持网络深度的同时足够轻量级。参数数为0.73M,便于移植到移动设备上。本文提出了一种新的尿液沉积物图像智能识别方法,具有良好的工程应用前景。
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Lightweight Urine Sediment Image Recognition Network Based on Deep Separable Residual Structure
The size of urine sediment image is small, different categories are easy to be confused, and feature extraction is difficult. This paper proposes an automatic recognition method of urine sediment images based on hourglass residual structure and super-resolution image reconstruction. First, annotate and preprocess the urine sediment image to generate a urine sediment data set. Then, the super-resolution reconstruction technology is used to reconstruct the small-size urine sediment image to adapt to the input of the deep learning model. Finally, an hourglass residual network is constructed to automatically extract the features of the urine sediment image to realize the classification and recognition of the urine sediment image. The experimental results show that the overall accuracy of the method for the recognition of 13 kinds of urine sediment images can reach 99.05%. This method is lightweight enough while maintaining the depth of the network. The number of parameters is 0.73M, which is conducive to porting to mobile devices. This paper proposes a new intelligent recognition method for urine sediment images, which has a good prospect for engineering applications.
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