首页> 外文会议>SMPTE Annual Technical Conference Exhibition >Automating Metadata Logging through Artificial Intelligence
【24h】

Automating Metadata Logging through Artificial Intelligence

机译:通过人工智能自动化元数据记录

获取原文

摘要

In 2007 NASCAR designed and implemented a media asset management solution for their sport. Now, in 2018, the library has grown to more than 500,000 hours of content containing video, audio and still images dating back to 1933 — one of the most vast sports libraries in the World. — Since the inception of the library, NASCAR has employed a staff to manually apply metadata to each video frame, amassing 10 million entries. While the logging by our staff has been impressive, the incoming data avalanche cannot be addressed by using the current system, let alone the glacier of data hiding in the archive. At present, we have calculated that it would take our existing staff nearly 150 years to log all of the historical content as it stands today. Over the past ten years we have extensively analyzed open-source and proprietary tools aimed at dealing with the data logging gap and have determined Machine Learning is the ideal solution to address metadata logging on large-scale media libraries. — As Machine Learning has become more accessible through the scalability of cloud computing, training and implementing Convolutional Neural Networks is now within the reach of media production companies and asset stakeholders. NASCAR is on the verge of revolutionizing how all data asset management systems can be restructured in the future to integrate machine learning to harness efficiencies in metadata logging.
机译:在2007年,NASCAR为他们的运动项目设计并实施了媒体资产管理解决方案。现在,到了2018年,该图书馆的内容已增长到超过50万小时,其中包含可追溯到1933年的视频,音频和静止图像-这是世界上最大的体育图书馆之一。 —自图书馆成立以来,NASCAR雇用了一名员工将元数据手动应用于每个视频帧,积累了1000万个条目。尽管我们员工的日志记录令人印象深刻,但使用当前系统无法解决传入数据雪崩的问题,更不用说隐藏在档案中的冰川了。目前,我们已经计算出,现有员工要花费近150年才能记录到今天的所有历史内容。在过去的十年中,我们已经广泛地分析了旨在解决数据记录差距的开源和专有工具,并确定机器学习是解决大型媒体库中元数据记录的理想解决方案。随着机器学习通过云计算的可扩展性变得越来越容易访问,卷积神经网络的培训和实施现在已经在媒体制作公司和资产利益相关者的能力范围之内。 NASCAR即将发生革命性变化,即将如何重组所有数据资产管理系统,以集成机器学习以利用元数据记录的效率。

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