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首页> 外文期刊>Nuclear Science, IEEE Transactions on >A Multi-Core FPGA-Based 2D-Clustering Implementation for Real-Time Image Processing
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A Multi-Core FPGA-Based 2D-Clustering Implementation for Real-Time Image Processing

机译:基于FPGA的多核2D群集实现实时图像处理

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摘要

A multi-core FPGA-based 2D-clustering implementation for real-time image processing is presented in this paper. The clustering algorithm is using a moving window technique to reduce the time and data required for the cluster identification process. The implementation is fully generic, with an adjustable detection window size. A fundamental characteristic of the implementation is that multiple clustering cores can be instantiated. Each core can work on a different identification window that processes data of independent “images” in parallel, thus, increasing performance by exploiting more FPGA resources. The algorithm and implementation are developed for the Fast TracKer processor for the trigger upgrade of the ATLAS experiment but their generic design makes them easily adjustable to other demanding image processing applications that require real-time pixel clustering.
机译:本文提出了一种基于FPGA的多核2D群集实现实时图像处理。聚类算法使用移动窗口技术来减少聚类识别过程所需的时间和数据。该实现是完全通用的,具有可调整的检测窗口大小。该实现的基本特征是可以实例化多个群集核心。每个内核可以在不同的识别窗口上工作,该窗口并行处理独立的“图像”数据,从而通过利用更多的FPGA资源来提高性能。该算法和实现是为Fast TracKer处理器开发的,用于ATLAS实验的触发升级,但是其通用设计使其可以轻松调整为需要实时像素聚类的其他苛刻图像处理应用程序。

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