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A Specialized Processor Suitable for AdaBoost-Based Detection with Haar-like Features

机译:一种专用处理器,适用于基于Adaboost的检测,具有哈尔样功能

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Robust and rapid object detection is one of the great challenges in the field of computer vision. This paper proposes a hardware architecture suitable for object detection by Viola and Jones [9] based on an AdaBoost learning algorithm with Haar-like features as weak classifiers. Our architecture realizes rapid and robust detection with two major features: hybrid parallel execution and an image scaling method. The first 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 the former classifiers to execute in parallel than subsequent classifiers. This dramatically improves the total processing speed without a great increase in circuit area. The second feature is a method of scaling input images instead of scaling classifiers. This increases the efficiency of hardware implementation while retaining a high detection rate. In addition we implement the proposed architecture on a Virtex-5 FPGA to show that it achieves real-time object detection at 30 frames per second on VGA video.
机译:鲁棒和快速的对象检测是计算机视野领域的巨大挑战之一。本文提出了一种适用于Viola和Jones [9]的对象检测的硬件架构,其基于哈尔样功能的Adaboost学习算法作为弱分类器。我们的架构通过两个主要特点实现了快速和强大的检测:混合并行执行和图像缩放方法。首先利用分类器的级联结构,其中位于级联开头附近的分类器比后续分类器更频繁地使用。我们将更多资源分配给前分类器以与后续分类器并行执行。这显着提高了总处理速度而不会大幅增加电路区域。第二特征是缩放输入图像而不是缩放分类器的方法。这增加了硬件实现的效率,同时保留了高检测率。此外,我们在Virtex-5 FPGA上实现了所提出的架构,以证明它在VGA视频上每秒30帧实现实时对象检测。

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