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Research on Low Resolution Cell Image Feature Fusion Algorithm Based on Convolutional Neural Network

机译:基于卷积神经网络的低分辨率细胞图像特征融合算法研究

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In this paper, a low-resolution image fusion method based on convolutional neural network is proposed for the problem of low resolution, few detail features and difficulty in feature extraction of cell images collected by lensless cell acquisition system. Firstly, the image of the cell collected by the medical microscope is segmented into a single white blood cell image with a resolution of 90 × 90 by image threshold segmentation algorithm, and then downsample it to 9 × 9 and input it into the feature fusion network for training. After the training is converged, a feature fusion model is obtained, and then the white blood cell image collected by the lensless cell collection system is input into the model to synthesize the fused cell image with a resolution of 36 × 36. Further, using image binarization and other algorithms, the nucleoplasmic ratio of the fused cell image can be obtained. Finally, the simulated vacuolar white blood cell image with a resolution of 9 × 9 is mixed with the normal white blood cell test image in different proportions and then tested. The test results show that the fused cell image shows a similar topographical feature to the larger part of the mixed test images. This is of great significance for the diagnosis of medical diseases.
机译:本文,提出了一种基于卷积神经网络的低分辨率图像融合方法,用于低分辨率,几个细节特征和难度提取由无透镜小区采集系统收集的细胞图像特征提取的问题。首先,通过图像阈值分割算法将由医用显微镜收集的电池的图像分段为90×90的分辨率,然后将其缩小到9×9并将其输入到特征融合网络中为了训练。训练被会聚后,获得的特征融合模型,然后由无透镜细胞收集系统收集的白细胞图像被输入到模型中以36×36。此外,使用图像的分辨率来合成融合细胞图像二值化和其他算法,可以获得熔融细胞图像的核性比率。最后,用分辨率为9×9的模拟真空白细胞图像以不同的比例与正常的白细胞测试图像混合,然后进行测试。测试结果表明,熔融单元图像显示了与混合测试图像的较大部分的类似地形特征。这对医学疾病的诊断具有重要意义。

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