High Performance Feature Detection on a Reconfigurable Co-Processor

J. Mar, A. Bissacco, Stefano Soatto, S. Ghiasi
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Abstract

In this paper, the authors propose a new design for feature detection used for tracking, which eliminates the need of a central computer to complete computations for the feature selection algorithm. Such a system constrains performance due to the delay in which data is transferred from camera to computer for processing. Our design suggests that feature detection computation can be done on a processor within the camera helping to reduce overall computation time for detection and increase performance for overall tracking system. However, these systems are often constrained by the processing power available to the camera. But with Benedetti and Perona's approach to Tomasi and Kanade's detection algorithm, such a design is possible to implement onto a camera system which would eliminate the delay and also improve performance over a tracking system designed on software
基于可重构协处理器的高性能特征检测
在本文中,作者提出了一种新的用于跟踪的特征检测设计,该设计消除了中央计算机完成特征选择算法计算的需要。这样的系统由于数据从相机传输到计算机进行处理的延迟而限制了性能。我们的设计表明,特征检测计算可以在相机内的处理器上完成,这有助于减少检测的总体计算时间,提高整个跟踪系统的性能。然而,这些系统通常受到相机可用处理能力的限制。但是,通过Benedetti和Perona对Tomasi和Kanade的检测算法的研究,这样的设计可以在相机系统上实现,这将消除延迟,并提高在软件上设计的跟踪系统的性能
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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