利用深度学习技术改造视频监控系统

Mihai Traian Andreescu, R. Mîrsu, C. Căleanu
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引用次数: 3

摘要

本文描述了开发嵌入式系统的步骤,该系统能够增强视频监控系统的功能。我们解决方案的硬件支持基于新推出的谷歌Coral开发板,其突出特点是板上边缘张量处理单元,能够以节能的方式执行最先进的移动视觉模型,如100+ FPS的MobileNet v2。谷歌Coral已被证明优于市场上现有的竞争机器学习硬件加速器,因此代表了最佳的精度/功率效率选择。软件部分包括一些基于深度学习的视频分析模块,如检测、分类和跟踪对象,包括汽车和人,使用MobileNet + SSD架构。此外,还介绍了实验设置:为谷歌Coral编译OpenCV,连接监控摄像机的视频流。该系统通过使用实时流协议/开放网络视频接口论坛连接,支持任何制造商的视频设备。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Retrofitting Video Surveillance Systems using Deep Learning Technologies
Steps toward the development of an embedded system that is able to enhance the capabilities of a video surveillance system are described within the proposed paper. The hardware support for our solution is based on the newly introduced Google Coral development board having, as a prominent feature, the on-board Edge Tensor Processing Unit, capable of execute state-of-the-art mobile vision models such as MobileNet v2 at 100+ FPS, in a power efficient manner. The Google Coral is proven to outperform competing Machine Learning hardware accelerators currently available on the market and so represents the best accuracy/power efficiency choice. The software part includes some deep learning-based modules for video analytics such as detection, classification and tracking objects, including cars and people, using MobileNet + SSD architecture. Also, the experimental setup is described: compiling OpenCV for Google Coral, connecting to the video stream of the surveillance cameras. The system supports video equipment by any manufacturer by interfacing to it using Real Time Streaming Protocol/Open Network Video Interface Forum connections.
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