基于fpga的扫描电子显微镜内目标检测与分类

C. Diederichs, S. Zimmermann, S. Fatikow
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引用次数: 2

摘要

目标检测与分类是微纳处理中的关键问题。显微镜图像通常是唯一可用的传感器来检测有关物体的位置和方向的信息。近年来,现场可编程门阵列(fpga)已被用于扫描电子显微镜(SEM)的图像采集。对该FPGA图像采集系统进行了扩展,实现了基本的图像处理和在线目标检测。提出了一种用于二值大目标检测的连通分量标记算法,并从在线目标检测和分类的角度分析了该算法的可行性。讨论并分析了二元大物体特征的可行性,重点讨论了基于主成分分析的特征。结果表明,该算法的FPGA实现可用于在图像采集过程中检测和分类碳纳米管(CNTs),从而在捕获整个图像之前实现快速目标检测。
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FPGA-based object detection and classification inside scanning electron microscopes
Object-detection and classification is a key task in micro- and nanohandling. The microscopy image is often the only available sensor to detect information about the positions and orientations of objects. Recently, Field Programmable Gate Arrays (FPGAs) have been used for scanning electron microscope (SEM) image acquisition. Such an FPGA image acquisition system is extended to perform basic image processing and on-line object detection. The connected component labeling algorithm for binary large object detection is presented and analyzed for its feasibility in terms of on-line object detection and classification. The features of binary large objects are discussed and analyzed for their feasibility with a single-pass connected component labeling approach, with focus on principal component analysis based features. It is shown that an FPGA implementation of the algorithm can be used to detect and classify carbon-nanotubes (CNTs) during image acquisition, allowing for fast object detection before the whole image is captured.
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