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Multimedia processing using deep learning technologies, high-performance computing cloud resources, and Big Data volumes

机译:多媒体处理使用深度学习技术,高性能计算云资源和大数据量

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摘要

The last few years have been marked by the presence of very large sets of images and videos in our everyday lives. These multimedia objects have a very fast frequency of creation and sharing since images and videos can come from different devices such as smartphones, satellites, cameras, or drones. They are generally used to illustrate objects in different situations (public areas, train stations, hospitals, political and sport events and competitions, etc). As consequence, image and video processing algorithms have got increasing importance for several computer vision applications that should be adapted for managing large-scale volumes and exploiting high performance computing resources (local or cloud). In this work, we propose a cloud-based toolbox (platform) for computer vision applications. This platform integrates a toolbox of image and video processing algorithms that can (i) exploit high performance computing cloud resources, (ii) execute applications in real time, and (iii) manage large-scale database using Big Data technologies. The related libraries and hardware drivers are automatically integrated and configured in order to offer to users an access to the different applications without the need to download, install, and configure software or hardware. Experiments were conducted using three kinds of applications: (i) image and video processing applications, (ii) deep learning techniques for images classification and multiobject localization, and (iii) images indexation and retrieval. These experiments demonstrated the interest of our platform for sharing, in an efficient way, our scientific contributions and annotated databases in order to improve the quality and performance of computer vision applications.
机译:在我们的日常生活中,过去几年已经标志着非常大量的图像和视频。这些多媒体对象具有非常快的创建频率,因为图像和视频可以来自诸如智能手机,卫星,摄像机或无人机的不同设备。它们通常用于说明不同情况(公共区域,火车站,医院,政治和体育赛事和竞争等的物体。结果,图像和视频处理算法对几个计算机视觉应用程序的重要性越来越重要,该应用程序应该适用于管理大规模卷和利用高性能计算资源(本地或云)。在这项工作中,我们提出了一个基于云的工具箱(平台),用于计算机视觉应用程序。该平台集成了图像和视频处理算法的工具箱,可以(i)利用高性能计算云资源,(ii)实时执行应用程序,(iii)使用大数据技术管理大规模数据库。相关库和硬件驱动程序自动集成和配置,以便为用户提供对不同应用程序的访问,而无需下载,安装和配置软件或硬件。使用三种应用进行实验:(i)图像和视频处理应用,(ii)用于图像分类和多元预期的深度学习技术,(iii)图像索引和检索。这些实验表明,我们的科学贡献和注释数据库的共享平台的利益,以提高计算机视觉应用的质量和性能。

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