We demonstrate a deep learning-based offline autofocusing method, termed Deep-R, that is trained to rapidly and blindly autofocus a single-shot microscopy image of a specimen that is acquired at an arbitrary out-of-focus plane. We illustrate the efficacy of Deep-R using various tissue sections that were imaged using fluorescence and brightfield microscopy modalities and demonstrate snapshot autofocusing under different scenarios, such as a uniform axial defocus as well as a sample tilt within the field-of-view. Our results reveal that Deep-R is significantly faster when compared with standard online algorithmic autofocusing methods. This deep learning-based blind autofocusing framework opens up new opportunities for rapid microscopic imaging of large sample areas, also reducing the photon dose on the sample.
翻译:我们展示了一种深层次的基于学习的离线自动聚焦方法,即深层R,该方法经过培训,能够快速和盲目地自动聚焦在任意的离焦平面上获取的样本的单发显微镜图像。我们用荧光和亮地显微镜模式图像的各种组织部分演示了深层R的功效,并展示了在不同的情景下快速聚焦的快照自动聚焦,例如统一的轴向脱焦和实地的抽样倾斜。我们的结果显示,与标准的在线算法自动聚焦方法相比,深层R大大加快了速度。这个深层基于学习的盲点自动聚焦框架为大样本地区的快速微镜成像开辟了新的机会,同时也减少了样本中的光剂量。