通过光流和形态学运算检测目标后的视频梯度算子

Operation Risha, C. Kumar, C. Kumar
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引用次数: 3

摘要

图像和视频处理是目前国际上一个非常重要的研究课题。它在视频监控、异常检测、人的行为分析等方面的应用已经遍及全球。然而,也有一些缺点,因为存储数据和检索特定数据需要很大的存储空间,而且从巨大的存储空间中进行存储非常困难,有时甚至对人力资源来说是不切实际的。在这种情况下,寻找具有高安全性和高效性的系统是很重要的。本文主要研究这种处理方法。本文描述了如何找出视频中运动物体的边缘。第一步是对运动物体进行检测,检测结果中会包含一些噪声,通过形态学运算可以在很大程度上去除这些噪声。结果输出的边缘将给出视频中移动物体的清晰图像。本文首先采用光流法检测运动目标,然后采用形态学闭合操作,最后采用梯度边缘检测技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gradient operator in video after object detection by optical flow and morphological operation
Image and video processing is a very important topic for research in the world. Its application pervade in the whole world, as perceived in video surveillance, anomaly detection, human action analysis etc. Nevertheless some drawbacks are there, as there is large storage required for storing the data and retrieval of a particular data and from the colossal storage it is very difficult or in some case it is even impractical by human resources. In such cases it is important to search for systems with high security and efficiency. This paper focuses on such a processing method. This paper describes how the edges of moving objects in the video will be found out. The first step is to detect the moving object, the result of which will contain some noises, which can be removed to a large extend by using morphological operation. The edges of the resultant output will give a clear picture of the moving object in the video. In this paper, apply optical flow method first to detect moving object, then morphological closing operation and then gradient edge detection techniques.
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