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A Parallel Hardware Architecture for Real-Time Object Detection with Support Vector Machines

机译:支持向量机的实时目标检测并行硬件架构

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摘要

Object detection applications are often associated with real-time performance constraints that stem from the embedded environment that they are often deployed in. Consequently, researchers have proposed dedicated hardware architectures, utilizing a variety of classification algorithms targeting object detection. Support Vector Machines (SVMs) is among the most popular classification algorithms used in object detection yielding high accuracy rates. However, existing SVM hardware implementations attempting to speed up SVM classification, have either targeted only simple applications, or SVM training. As such, there are limited proposed hardware architectures that are generic enough to be used in a variety of object detection applications. Hence, this paper presents a parallel array architecture for SVM-based object detection, in an attempt to show the advantages, and performance benefits that stem from a dedicated hardware solution. The proposed hardware architecture provides parallel processing, resource sharing among the processing units, and efficient memory management. Furthermore, the size of the array is scalable to the hardware demands, and can also handle a variety of applications such as multiclass classification problems. A prototype of the proposed architecture was implemented on an FPGA platform and evaluated using three popular detection applications, demonstrating real-time performance (40-122 fps for a variety of applications).
机译:对象检测应用程序通常与实时性能约束相关联,这些实时性能约束源于它们通常部署在其中的嵌入式环境。因此,研究人员提出了专用的硬件体系结构,利用了多种针对对象检测的分类算法。支持向量机(SVM)是用于对象检测的最流行的分类算法,可产生较高的准确率。但是,尝试加快SVM分类的现有SVM硬件实现仅针对简单应用程序或SVM培训。这样,有限的提议的硬件体系结构是通用的,足以在各种对象检测应用中使用。因此,本文提出了一种用于基于SVM的对象检测的并行阵列体系结构,以试图展示出专用硬件解决方案带来的优势和性能优势。所提出的硬件体系结构提供了并行处理,处理单元之间的资源共享以及有效的内存管理。此外,阵列的大小可扩展至硬件需求,并且还可以处理多种应用,例如多类分类问题。所提出架构的原型已在FPGA平台上实现,并使用三种流行的检测应用程序进行了评估,从而证明了其实时性能(各种应用程序的帧率为40-122 fps)。

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