使用tensorflow和深度学习来检测物体和人,并跟踪视频中的运动

Jemai Bornia, A. Frihida, C. Claramunt
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引用次数: 0

摘要

随着数字时代的到来,特别是视频时代的到来,每天都会产生大量的数据,如电视存档、视频监控等。面对需要保持对这些内容的控制,能够对其进行分析,分类和许多其他应用程序,对能够高效快速执行此任务的算法的需求是不可否认的。该方法允许使用深度学习和TensorFlow技术对视频序列进行分析。该方法将视频分割成一组图像,检测这些图像中的对象/实体,并将其描述存储到标准XML文件中。通过我们开发的算法,我们可以跟踪视频序列中动画实体的运动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting objects and people and tracking movements in a video using tensorflow and deeplearning
with the advent of the digital age and more specifically videos, a huge amount of data is produced every day such as television archiving, video surveillance, etc. Faced with the need to keep control over this content, to be able to analyze it, classify it and many other applications, the need for algorithms capable of performing this task efficiently and quickly is undeniable. The proposed approach permits the analysis of video sequences using deep learning and TensorFlow technologies. The proposed approach splits video in set of images, detects objects/entities present in these images and stores their descriptions into a standard XML file. With an algorithm we developed, we're able track motion that animated entities in the video sequences.
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