REAL-TIME OBJECT DETECTION IN PARALLEL THROUGH ATOMIC TRANSACTIONS

Kavinayan Sivakumar, P. Shanmugapriya
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引用次数: 0

Abstract

Object detection and tracking is important operation involved in embedded systems like video surveillance, Traffic monitoring, campus security system, machine vision applications and other areas. Detecting and tracking multiple objects in a video or image is challenging problem in machine vision and computer vision based embedded systems. Implementation of such an object detection and tracking systems are done in sequential way of processing and also it was implemented using hardware synthesize tools like verilog HDL with FPGA, achieves considerably lesser performance in speed and it does support lesser atomic transactions. There are many object detection and tracking algorithm were proposed and implemented, among them background subtraction is one of them. This paper proposes an implementation of detecting and tracking multiple objects based on background subtraction algorithm using java and .NET and also discuss about the architecture concept for object detection through atomic transactional, modern hardware synthesizes language called Bluespec.
通过原子事务并行进行实时对象检测
物体检测与跟踪是视频监控、交通监控、校园安防系统、机器视觉应用等嵌入式系统中涉及的重要操作。在基于机器视觉和计算机视觉的嵌入式系统中,检测和跟踪视频或图像中的多个目标是一个具有挑战性的问题。这种对象检测和跟踪系统的实现是以顺序处理的方式完成的,并且它是使用硬件合成工具(如verilog HDL和FPGA)实现的,在速度上实现了相当低的性能,并且它确实支持较少的原子事务。提出并实现了许多目标检测与跟踪算法,背景减法就是其中的一种。本文提出了一种基于java和。net的基于后台减法算法的多目标检测与跟踪的实现方法,并讨论了通过原子事务、现代硬件综合语言Bluespec进行对象检测的体系结构概念。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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