一个可扩展的视频识别学习系统

R. Porter, C. Chakrabarti, N. Harvey, Garrett T. Kenyon
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引用次数: 0

摘要

学习已经成为许多图像和视频处理系统的重要组成部分,但它并不经常被用作端到端解决方案。一些最成功的端到端学习演示是卷积或共享权重网络。我们对这种方法如何扩展很感兴趣,并开发了一个灵活的框架来实现和训练称为Harpo的大规模卷积网络。我们概述了Harpo框架,并描述了一种多层学习策略,用于针对视频数据流中感兴趣的特定特征优化卷积网络。Harpo旨在利用可重构硬件来加速大规模并行卷积网络组件并实现实时处理速度。在本文中,我们提出了初步的软件实验,使用该系统对无人机视频数据中来自军用车辆的排气羽流进行分割
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A scalable learning system for video recognition
Learning has become an essential part of many image and video processing systems, but it is not often used as an end-to-end solution. Some of the most successful demonstrations of end-to-end learning have been with convolutional, or shared weight networks. We are interested in how this approach can scale and have developed a flexible framework for implementing and training large scale convolutional networks called Harpo. We present an overview of the Harpo framework and describe a multilevel learning strategy used to optimize convolutional networks for particular features of interest in video data streams. Harpo is designed to exploit reconfigurable hardware to accelerate massively parallel convolutional network components and achieve real-time processing speeds. In this paper, we present initial software experiments which use the system to segment exhaust plumes coming from military vehicles in unmanned aerial vehicle video data
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