智能视频监控的嵌入式人脸分析

R. Giorgi, David Oro, S. Ermini, Francesco Montefoschi, A. Rizzo
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引用次数: 0

摘要

在本文中,我们描述了我们的方法来设计一个智能视频监控系统的面部分析。该系统旨在通过收集火车站、机场、购物中心等高度拥挤区域的人口统计数据来提高安全性。该系统架构基于卷积神经网络(cnn),与通用处理器和gpu相比,依靠可重构的硬件来加速部分计算并降低功耗。为了实现简单的可编程性,该平台使用了OmpSs编程模型,该模型通过向顺序代码中添加简单的指令来提供并行化和加速。资源密集型任务被卸载到可重新配置的硬件上,以达到期望的性能水平。我们的评估表明,我们可以每帧检测600多个人脸,同时保持功耗在8W左右。使用AXIOM硬件/软件平台进行测试。
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Embedded Face Analysis for Smart Videosurveillance
In this paper, we describe our methodology for designing a smart Videosurveillance system for face analysis. The system aims at increasing the security by gathering demographic statistics in highly crowded areas such as train stations, airports and shopping malls. Based on Convolutional Neural Networks (CNNs), the system architecture relies on the reconfigurable hardware to accelerate part of the computation and reduce the power consumption compared to general-purpose processors and GPUs. To achieve easy programmability, the platform makes use of the OmpSs programming model, which provides parallelization and acceleration by using simple directives to be added to the sequential code. The rsource-intensive tasks are offloaded to the reconfigurable hardware in order to achieve the desired performance levels. Our evaluation shows that we can detect more than 600 faces per frame, while keeping the power consumption at about 8W. The tests were performed by using the AXIOM hardware/software platform.
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