自动对焦
计算机科学
人工智能
计算机视觉
数字化病理学
光学(聚焦)
显微镜
显微镜
景深
图像质量
光学
图像(数学)
物理
作者
Jun Liao,Xu Chen,Ge Ding,Pei Dong,Ye Hu,Han Wang,Yongbing Zhang,Jianhua Yao
摘要
Digital pathology is being transformed by artificial intelligence (AI)-based pathological diagnosis. One major challenge for correct AI diagnoses is to ensure the focus quality of captured images. Here, we propose a deep learning-based single-shot autofocus method for microscopy. We use a modified MobileNetV3, a lightweight network, to predict the defocus distance with a single-shot microscopy image acquired at an arbitrary image plane without secondary camera or additional optics. The defocus prediction takes only 9 ms with a focusing error of only ∼1/15 depth of field. We also provide implementation examples for the augmented reality microscope and the whole slide imaging (WSI) system. Our proposed technique can perform real-time and accurate autofocus which will not only support pathologists in their daily work, but also provide potential applications in the life sciences, material research, and industrial automatic detection.
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