FPGA Implementation of Hardware Accelerator for Real-time Video Image Edge Detection

Xiangxiang Wei, Gaoming Du, Xiaolei Wang, Hongfang Cao, Shijie Hu, Duoli Zhang, Zhenmin Li
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引用次数: 2

Abstract

Image edge is considered to be the most important attribute to provide valuable image perception information. At present, video image data is developing towards high resolution and high frame number. The image data processing capacity is huge, so the processing speed is very strict to meet the real-time performance of image data transmission. In this context, we present a method to accelerate the real-time video image edge detection. FPGA is used as the development platform. The real-time edge detection algorithm of image data with 1280x720 resolution and 30 frame/s, combined with median filter, Sobel edge detection algorithm and corrosion expansion algorithm, makes the running time of image processing module shorter. The color image of the video image collected by camera is processed. The HDMI interface shows that the scheme has achieved ideal results in the FPGA hardware platform simulation model, greatly improves the efficiency of the algorithm, and provides a guarantee for the speed and stability of the real-time image processing system.
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实时视频图像边缘检测硬件加速器的FPGA实现
图像边缘被认为是提供有价值的图像感知信息的最重要的属性。目前,视频图像数据正朝着高分辨率、高帧数的方向发展。图像数据处理能力巨大,因此对处理速度要求非常严格,以满足图像数据传输的实时性。在此背景下,我们提出了一种加速实时视频图像边缘检测的方法。采用FPGA作为开发平台。采用1280x720分辨率、30帧/秒的图像数据实时边缘检测算法,结合中值滤波、Sobel边缘检测算法和腐蚀膨胀算法,缩短了图像处理模块的运行时间。对摄像机采集的视频图像进行彩色图像处理。HDMI接口表明,该方案在FPGA硬件平台仿真模型中取得了理想的效果,大大提高了算法的效率,为实时图像处理系统的速度和稳定性提供了保证。
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