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首页> 外文期刊>Ultramicroscopy >Autofocus on moving object in scanning electron microscope
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Autofocus on moving object in scanning electron microscope

机译:在扫描电子显微镜中的移动物体上的自动聚焦

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Highlights?Method allowing to maintain a moving object in focus for SEM is proposed.?Method is based on online stochastic optimization of sharpness function.?Without sweeping and without training.?Method works at high frame rate of 5?Hz and object speed of 20? μm/s and 0.2? deg/s.?It is robust to variations of parameters, magnification and object speed.AbstractThe sharpness of the images coming from a Scanning Electron Microscope (SEM) is a very important property for many computer vision applications at micro- and nanoscale. It represents how much object details are distinctive in the images: the object may be perceived sharp or blurred. Image sharpness highly depends on the value of focal distance, or working distance in the case of the SEM. Autofocus is the technique allowing to automatically adjust the working distance to maximize the sharpness. Most of the existing algorithms allows working only with a static object which is enough for the tasks of visualization, manual microanalysis or microcharacterization. These applications work with a low frame rate, less than 1?Hz, that guarantees a low level of noise. However, static autofocus can not be used for samples performing continuous 3D motion, which is the case of robotic applications where it is required to carry out a continuous 3D position measurement, e.g., nano-assembly or nanomanipulation. Moreover, in addition to constantly keeping object in focus while it is moving, it is required to perform the operation at high frame rate. The approach offering both these possibilities is presented in this paper and is referred as dynamic autofocus. The presented solution is based on stochastic optimization techniques. It allows tracking the maximum of the sharpness of the images without sweep and without training. It works under uncertainty conditions: presence of noise in images, unknown maximal sharpness and unknown 3D motion of the specimen. The experiments, that were performed with noisy images at high frame rate (5?Hz), were conducted on a Carl Zeiss Auriga 60 FE-SEM. They prove the robustness of the algorithm with respect to the variation of optimization parameters, object speed and magnification. Moreover, it is invariant to the object structure and its variation in time.]]>
机译:<![cdata [ 亮点 提出了维护焦点的移动对象的方法。 < CE:列表项ID =“celistItem0002”> 方法基于锐度函数的在线随机优化。< / ce:para> 没有扫描而没有训练。 方法以高帧速率为5?Hz和物体速度为20? μm/ s和0.2? deg / s。 它是对参数,放大和对象速度的变化的稳健。 抽象 来自扫描电子显微镜(SEM)的图像的锐度是许多计算机视觉的非常重要的财产在微型和纳米级的应用。它表示图像中的物体细节与图像中的特点是多少:可以感知对象尖锐或模糊。图像清晰度高度取决于焦距的值,或在SEM的情况下的工作距离。自动对焦是允许自动调整工作距离以最大化锐度的技术。大多数现有算法允许仅使用静态对象工作,这足以用于可视化的任务,手动微观分析或微观分析。这些应用程序以低于1?Hz的低帧速率运行,可确保噪音水平低。然而,静态自动对焦不能用于执行连续3D运动的样本,这是机器人应用的情况,其中需要进行连续的3D位置测量,例如纳米组件或纳米尺寸。此外,除了在移动时不断保持对焦的对象之外,还需要以高帧速率执行操作。本文提出了这两种可能性的方法,并称为动态自动对焦。呈现的解决方案基于随机优化技术。它允许在不扫描的情况下跟踪图像的最大锐度,而不没有培训。它在不确定条件下工作:存在图像中的噪声,未知的最大清晰度和标本未知的3D运动。在高帧速率(5ΩHz)下用嘈杂图像进行的实验在Carl Zeiss Auriga 60 Fe-Sem上进行。它们对于优化参数,物体速度和放大率的变化来证明算法的稳健性。此外,它不变于对象结构及其变化。 ]]>

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