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Application of convolutional neural network to acquisition of clear images for objects with large vertical size in stereo light microscope vision system

机译:卷积神经网络在立体声光学显微镜视觉系统中具有大垂直尺寸的物体清晰图像的应用

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摘要

For an object with large vertical size that exceeds the certain depth of a stereo light microscope (SLM), its image will be blurred. To obtain clear images, we proposed an image fusion method based on the convolutional neural network (CNN) for the microscopic image sequence. The CNN was designed to discriminate clear and blurred pixels in the source images according to the neighborhood information. To train the CNN, a training set that contained correctly labeled clear and blurred images was created from an open-access database. The image sequence to be fused was aligned at first. The trained CNN was then used to measure the activity level of each pixel in the aligned source images. The fused image was obtained by taking the pixels with the highest activity levels in the source image sequence. The performance was evaluated using five microscopic image sequences. Compared with other two fusion methods, the proposed method obtained better performance in terms of both visual quality and objective assessment. It is suitable for fusion of the SLM image sequence.
机译:对于具有超过立体声光学显微镜(SLM)的某些深度的具有大垂直尺寸的物体,其图像将模糊。为了获得清晰的图像,我们提出了一种基于微观图像序列的卷积神经网络(CNN)的图像融合方法。设计CNN以根据邻域信息区分源图像中的透明和模糊像素。要训​​练CNN,从开放访问数据库创建了一种正确标记的清晰和模糊图像的培训集。待熔融的图像序列首先对齐。然后使用训练的CNN来测量对准源图像中的每个像素的活动水平。通过将具有最高活动水平的像素置于源图像序列中的像素来获得熔融图像。使用五种微观图像序列评估性能。与其他两个融合方法相比,该方法在视觉质量和客观评估方面获得了更好的性能。它适用于SLM图像序列的融合。

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