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Can Deep Learning Relax Endomicroscopy Hardware Miniaturization Requirements?

机译:深度学习能否放松内窥镜检查对硬件小型化的要求?

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Confocal laser endomicroscopy (CLE) is a novel imaging modality that provides in vivo histological cross-sections of examined tissue. Recently, attempts have been made to develop miniaturized in vivo imaging devices, specifically confocal laser microscopes, for both clinical and research applications. However, current implementations of miniature CLE components such as confocal lenses compromise image resolution, signal-to-noise ratio, or both, which negatively impacts the utility of in vivo imaging. In this work, we demonstrate that software-based techniques can be used to recover lost information due to endomicroscopy hardware miniaturization and reconstruct images of higher resolution. Particularly, a densely connected convolutional neural network is used to reconstruct a high-resolution CLE image, given a low-resolution input. In the proposed network, each layer is directly connected to all subsequent layers, which results in an effective combination of low-level and high-level features and efficient information flow throughout the network. To train and evaluate our network, we use a dataset of 181 high-resolution CLE images. Both quantitative and qualitative results indicate superiority of the proposed network compared to traditional interpolation techniques and competing learning-based methods. This work demonstrates that software-based super-resolution is a viable approach to compensate for loss of resolution due to endoscopic hardware miniaturization.
机译:共聚焦激光内窥镜检查(CLE)是一种新颖的成像方式,可提供受检组织的体内组织学横截面。最近,已经尝试开发用于临床和研究应用的小型体内成像装置,特别是共聚焦激光显微镜。然而,诸如共焦透镜之类的微型CLE组件的当前实现方式损害了图像分辨率,信噪比或两者,这不利地影响了体内成像的实用性。在这项工作中,我们证明了基于软件的技术可用于恢复由于内窥镜硬件小型化而丢失的信息并重建更高分辨率的图像。特别地,在低分辨率输入的情况下,密集连接的卷积神经网络用于重建高分辨率CLE图像。在提议的网络中,每一层都直接连接到所有后续层,从而有效地组合了低级和高级功能以及整个网络中有效的信息流。为了训练和评估我们的网络,我们使用了181张高分辨率CLE图像的数据集。与传统的插值技术和竞争性基于学习的方法相比,定量和定性结果均表明所提出网络的优越性。这项工作表明,基于软件的超分辨率是一种补偿由于内窥镜硬件小型化而导致的分辨率损失的可行方法。

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