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GP-GPU Implementation of the 'Local Rank Differences' Image Feature

机译:GP-GPU“局部等级差异”图像功能的实现

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A currently popular trend in object detection and pattern recognition is usage of statistical classifiers, namely AdaBoost and its modifications. The speed performance of these classifiers largely depends on the low level image features they are using: both on the amount of information the feature provides and the processor time of its evaluation. Local Rank Differences is an image feature that is alternative to commonly used haar wavelets. It is suitable for implementation in programmable (FPGA) or specialized (ASIC) hardware, but -as this paper shows -it performs very well on graphics hardware (GPU) used in general purpose manner (GPGPU, namely CUDA in this case) as well. The paper discusses the LRD features and their properties, describes an experimental implementation of the LRD in graphics hardware using CUDA, presents its empirical performance measures compared to alter native approaches, suggests several notes on practical usage of LRD and proposes directions for future work.
机译:当前在对象检测和模式识别中流行的趋势是使用统计分类器,即AdaBoost及其修改。这些分类器的速度性能在很大程度上取决于它们使用的低级图像功能:既取决于功能提供的信息量,也取决于处理器对其进行评估的时间。本地秩差异是一种图像功能,可以替代常用的哈尔小波。它适合于在可编程(FPGA)或专用(ASIC)硬件中实现,但是-如本文所示-它在以通用方式使用的图形硬件(GPU)(在这种情况下为GPGPU,即CUDA)上也表现出色。本文讨论了LRD的特性及其特性,描述了使用CUDA在图形硬件中进行LRD的实验实现,提出了与替代本机方法相比的经验性能指标,对LRD的实际使用提出了一些注意事项,并提出了未来工作的方向。

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