零拍摄单元图像超分辨率

Jeonghyun Noh, Jinsun Park
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引用次数: 0

摘要

细胞的形状是诊断癌症或某些疾病的细胞检查中的一个重要因素,然而,由于显微镜的局限性和性质,可以获得低分辨率(LR)细胞图像。LR图像在分析细胞表型或形态特征方面有局限性。因此,它们需要恢复为高分辨率(HR)图像。在本文中,我们提出了一种零镜头超分辨率(ZSSR)算法来重建细胞形状信息。其中,采用高频滤波模块(HFM),通过提取图像中作为高频信息的细胞的边缘、角落等各种信息来计算HR和LR的差值。此外,抑制和强调特征信息的通道注意块(CAB)用于SR,而不会与图像中相似的细胞形状混淆。通过共享网络参数,提高了网络的泛化性能。结果表明,与之前的ZSSR相比,PSNR提高了0.04dB。源代码将在https://github.com/JJeong-Gari/Cell-ZSSR/上提供
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Zero-Shot Cell Image Super-Resolution
The shape of a cell is an important factor in cell examinations that diagnose cancer or certain disease, however, due to the limitations and nature of the microscope, low-resolution (LR) cell images can be obtained. LR images have limitations in analyzing the phenotype or morphological characteristics of cells. Therefore, they need to be restored to high-resolution (HR) images. In this paper, we propose a zero-shot super-resolution (ZSSR) algorithm to reconstruct cell shape information. In specific, a high-frequency filtering module (HFM) is adopted to calculate the difference between HR and LR by extracting various information such as the edge and corners of cells which are high-frequency information in an image. In addition, channel attention blocks (CAB) that suppress and emphasize feature information are used for SR without being confused with similar cell shapes in an image. It also improves the generalization performance of the network by sharing the network’s parameters. As a result, PSNR is improved by 0.04dB compared to that of the previous ZSSR. The source code will be made available at : https://github.com/JJeong-Gari/Cell-ZSSR/
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