全息分类器:基于深度学习的数字全息微物体自动分类

Yanmin Zhu, C. Yeung, E. Lam
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引用次数: 7

摘要

微物体,如微塑料和颗粒污染,需要通过高精度光学系统精确观察和检测。数字全息术是检测这种微小物体的有力工具。然而,传统的数字全息需要额外的图像处理,如相位解包裹、去噪和重新聚焦,这花费了大量的时间,并且在微目标检测中没有始终保持较好的性能。本文提出了一种智能全息分类器,它是一种基于深度学习的无透镜内联数字全息系统,可以直接在原始全息图上检测微物体,并通过自动物体分类显示单个全息图上微物体的定量信息。在一个演示中,我们捕获了微塑料颗粒的全息图,它们很容易与灰尘颗粒混淆,我们达到了97%以上的精度。与其他领先的分类器相比,我们的方法具有更短的训练时间,更快的分类和定量分析,更高的准确率和更好的鲁棒性。此外,该智能数字全息系统只需要一个发光二极管(LED)、一个样品载玻片和一个CMOS相机,就可以作为一种便携式低成本的微塑料计数和分类工具,推动生态环境中微塑料检测的发展。
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Holographic Classifier: Deep Learning in Digital Holography for Automatic Micro-objects Classification
Micro-objects, such as microplastics and particulate pollution, need to be accurately observed and detected by high-precision optical systems. Digital holography is a powerful tool to detect such microscopic objects. However, traditional digital holography requires additional image processing such as phase unwrapping, de-noising, and refocusing, which costs a lot of time and does not have a consistently better performance in micro-object detection. Here, we propose an intelligent holographic classifier, which is a deep learning-based lensless inline digital holography system to detect the micro-object directly on the raw holograms and show the quantitative information of micro-objects for individual hologram by automatic object classification. In a demonstration where we capture the holograms of microplastics particles, which are easily confused with dust particles, we arrive at an accuracy above 97%. Compared with other leading classifiers, our method has shorter training time, faster classification and quantitative analysis, higher accuracy, and better robustness. Furthermore, this intelligent digital holography system, which requires only a light-emitting diode (LED), a sample slide, and a CMOS camera, can be used as a portable low-cost microplastics counting and classification tool, driving the development of microplastics detection in the ecological environment.
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