首页> 外文期刊>Sustainability >GPU-Accelerated Foreground Segmentation and Labeling for Real-Time Video Surveillance
【24h】

GPU-Accelerated Foreground Segmentation and Labeling for Real-Time Video Surveillance

机译:GPU加速的实时视频监控的前景分割和标记

获取原文
       

摘要

Real-time and accurate background modeling is an important researching topic in the fields of remote monitoring and video surveillance. Meanwhile, effective foreground detection is a preliminary requirement and decision-making basis for sustainable energy management, especially in smart meters. The environment monitoring results provide a decision-making basis for energy-saving strategies. For real-time moving object detection in video, this paper applies a parallel computing technology to develop a feedback foreground–background segmentation method and a parallel connected component labeling (PCCL) algorithm. In the background modeling method, pixel-wise color histograms in graphics processing unit (GPU) memory is generated from sequential images. If a pixel color in the current image does not locate around the peaks of its histogram, it is segmented as a foreground pixel. From the foreground segmentation results, a PCCL algorithm is proposed to cluster the foreground pixels into several groups in order to distinguish separate blobs. Because the noisy spot and sparkle in the foreground segmentation results always contain a small quantity of pixels, the small blobs are removed as noise in order to refine the segmentation results. The proposed GPU-based image processing algorithms are implemented using the compute unified device architecture (CUDA) toolkit. The testing results show a significant enhancement in both speed and accuracy.
机译:实时和准确的背景建模是远程监控和视频监控领域的重要研究主题。同时,有效的前景检测是可持续能源管理的初步要求和决策基础,特别是在智能仪表中。环境监测结果为节能策略提供了决策基础。对于视频中的实时移动对象检测,本文采用并行计算技术来开发反馈前台 - 背景分割方法和并行连接的组件标记(PCCL)算法。在后台建模方法中,从顺序图像生成图形处理单元(GPU)存储器中的像素 - 方向颜色直方图。如果当前图像中的像素颜色不定位其直方图的峰值,则它被分段为前景像素。从前景分割结果,提出了一种PCCL算法以将前景像素聚集成几个组,以便区分单独的BLOB。由于前景分段结果中的嘈杂点和闪光始终包含少量像素,因此小斑点被移除为噪声,以便改进分段结果。使用计算统一设备架构(CUDA)工具包来实现所提出的基于GPU的图像处理算法。测试结果表现出速度和准确性的显着增强。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号