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Partially Parallel Architecture for AdaBoost-Based Detection With Haar-Like Features

机译:具有基于Haar的功能的基于AdaBoost的检测的部分并行架构

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This paper proposes a hardware architecture for object detection based on an AdaBoost learning algorithm with Haar-like features as weak classifiers. We analyze and discuss the parallelism in this detection algorithm and propose a partially parallel execution model suitable for hardware implementation. This parallel execution model exploits the cascade structure of classifiers, in which classifiers located near the beginning of the cascade are used more frequently than subsequent classifiers. We assign more resources to these earlier classifiers to execute in parallel than to subsequent classifiers. This dramatically improves the total processing speed without a great increase in circuit area. Moreover, the partially parallel execution model achieves flexible processing performance by adjusting the balance of parallel processing. In addition, we implement the proposed architecture on a Virtex-5 FPGA to show that it achieves real-time object detection at 30 fps on VGA video without candidate extraction.
机译:本文提出了一种基于AdaBoost学习算法的目标检测硬件架构,该学习算法具有类似Haar的特征作为弱分类器。我们分析并讨论了这种检测算法中的并行性,并提出了适合硬件实现的部分并行执行模型。该并行执行模型利用了分类器的级联结构,其中位于级联开始附近的分类器比后续的分类器更频繁地使用。我们为这些较早的分类器分配了比后续分类器更多的资源来并行执行。这大大提高了总处理速度,而电路面积却没有大大增加。此外,部分并行执行模型通过调整并行处理的平衡来实现灵活的处理性能。此外,我们在Virtex-5 FPGA上实现了所建议的体系结构,以表明它可以在VGA视频上以30 fps的速度实现实时目标检测,而无需提取候选对象。

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