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Optimization of computer vision algorithms for real time platforms

机译:实时平台的计算机视觉算法的优化

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Real time computer vision applications like video streaming on cell phones, remote surveillance and virtual reality have stringent performance requirements but can be severely restrained by limited resources. The use of optimized algorithms is vital to meet real-time requirements especially on popular mobile platforms. This paper presents work on performance optimization of common computer vision algorithms such as correlation on such embedded systems. The correlation algorithm which is popular for face recognition, can be implemented using convolution or the Discrete Fourier Transform (DFT). The algorithms are benchmarked on the Intel Pentium processor and Beagleboard, which is a new low-cost low-power platform based on the Texas Instruments (TI) OMAP 3530 processor architecture. The OMAP processor consists of an asymmetric dual-core architecture, including an ARM and a DSP supported by shared memory. OpenCV, which is a computer vision library developed by Intel corporation was utilized for some of the algorithms. Comparative results for the various approaches are presented and discussed with an emphasis on real-time implementation.
机译:实时计算机视觉应用程序(例如手机上的视频流,远程监视和虚拟现实)具有严格的性能要求,但可能会受到有限资源的严重限制。优化算法的使用对于满足实时要求至关重要,尤其是在流行的移动平台上。本文介绍了常见计算机视觉算法的性能优化工作,例如在此类嵌入式系统上的相关性。可以使用卷积或离散傅里叶变换(DFT)来实现在人脸识别中流行的相关算法。该算法以Intel Pentium处理器和Beagleboard为基准,Beagleboard是基于德州仪器(TI)OMAP 3530处理器架构的新型低成本,低功耗平台。 OMAP处理器由非对称双核架构组成,包括共享内存支持的ARM和DSP。 OpenCV是由英特尔公司开发的计算机视觉库,用于某些算法。呈现和讨论了各种方法的比较结果,并着重于实时实现。

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