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A Neural Network Approach Based on Interference Pattern Analysis: Application to an Autoalignment Method for the Focusing Unit of NFR System

机译:基于干扰模式分析的神经网络方法:在NFR系统聚焦单元自动对准方法中的应用

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摘要

From the viewpoint of assembly, evaluation results and an autoalignment method for the focusing unit (FU) of a near-field recording (NFR) system are proposed. Generally, the size of the focusing unit composed of the objective lens and the solid immersion lens is smaller than that of the conventional focusing unit. Hence there are difficulties in the precise assembly of the small focusing unit. We developed an evaluation system with an interferometer and evaluated some focusing unit samples, then a tolerance analysis of the assembly error between the SIL and the objective lens and an interference pattern analysis of the assembly error were carried out. A pattern recognition method using a neural network is presented with features, which were extracted from interference patterns due to errors in the FU.
机译:从组装的角度出发,提出了近场记录(NFR)系统的聚焦单元(FU)的评估结果和自动对准方法。通常,由物镜和固体浸没透镜组成的聚焦单元的尺寸小于常规聚焦单元的尺寸。因此,难以精确地组装小型聚焦单元。我们开发了一种使用干涉仪的评估系统,并对一些聚焦单元样品进行了评估,然后对SIL和物镜之间的装配误差进行了公差分析,并对装配误差进行了干涉图样分析。提出了一种使用神经网络的模式识别方法,该方法具有特征,这些特征是由于FU中的错误而从干扰模式中提取的。

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