期刊文献+
共找到2篇文章
< 1 >
每页显示 20 50 100
基于背景移除的时域目标检测 被引量:10
1
作者 王博 刘德连 张建奇 《通信学报》 EI CSCD 北大核心 2009年第7期67-72,共6页
针对时域目标检测算法中跟踪数据量大、实时实现难度高的缺点,提出一种基于背景移除的时域目标检测方法。该方法首先根据不同像素点的时域起伏特性建立一个统一的模型,进而利用最小二乘法估计出该模型的参数,实现静态背景的移除。然后... 针对时域目标检测算法中跟踪数据量大、实时实现难度高的缺点,提出一种基于背景移除的时域目标检测方法。该方法首先根据不同像素点的时域起伏特性建立一个统一的模型,进而利用最小二乘法估计出该模型的参数,实现静态背景的移除。然后采用最小值滤波估计出目标信号的检测基准,并进一步分析了像素时域特性偏离该基准的分布特性,最终得到一个合适的目标检测量度。将所给出的算法应用于实际运动弱小目标的检测,实验结果表明,此算法对于复杂背景下的运动弱小目标具有很好的检测性能。 展开更多
关键词 时域目标检测 运动弱小目标 背景去除 最小二乘
在线阅读 下载PDF
A new approach for real time object detection and tracking on high resolution and multi-camera surveillance videos using GPU 被引量:4
2
作者 Mohammad Farukh Hashmi Ritu Pal +1 位作者 Rajat Saxena Avinash G.Keskar 《Journal of Central South University》 SCIE EI CAS CSCD 2016年第1期130-144,共15页
High resolution cameras and multi camera systems are being used in areas of video surveillance like security of public places, traffic monitoring, and military and satellite imaging. This leads to a demand for computa... High resolution cameras and multi camera systems are being used in areas of video surveillance like security of public places, traffic monitoring, and military and satellite imaging. This leads to a demand for computational algorithms for real time processing of high resolution videos. Motion detection and background separation play a vital role in capturing the object of interest in surveillance videos, but as we move towards high resolution cameras, the time-complexity of the algorithm increases and thus fails to be a part of real time systems. Parallel architecture provides a surpass platform to work efficiently with complex algorithmic solutions. In this work, a method was proposed for identifying the moving objects perfectly in the videos using adaptive background making, motion detection and object estimation. The pre-processing part includes an adaptive block background making model and a dynamically adaptive thresholding technique to estimate the moving objects. The post processing includes a competent parallel connected component labelling algorithm to estimate perfectly the objects of interest. New parallel processing strategies are developed on each stage of the algorithm to reduce the time-complexity of the system. This algorithm has achieved a average speedup of 12.26 times for lower resolution video frames(320×240, 720×480, 1024×768) and 7.30 times for higher resolution video frames(1360×768, 1920×1080, 2560×1440) on GPU, which is superior to CPU processing. Also, this algorithm was tested by changing the number of threads in a thread block and the minimum execution time has been achieved for 16×16 thread block. And this algorithm was tested on a night sequence where the amount of light in the scene is very less and still the algorithm has given a significant speedup and accuracy in determining the object. 展开更多
关键词 central processing unit (CPU) graphics processing unit (GPU) MORPHOLOGY connected component labelling (CCL)
在线阅读 下载PDF
上一页 1 下一页 到第
使用帮助 返回顶部