论文标题

基于深度卷积神经网络的基于基于基于的主动摄像机控制

Imitation-Based Active Camera Control with Deep Convolutional Neural Network

论文作者

Kyrkou, Christos

论文摘要

对智能相机监视,交通监控和智能环境等应用的自动视觉监控和控制的需求日益增加,这需要改进视觉主动监视的方法。传统上,主动监视任务是通过模块(例如检测,过滤和控制)的管道来处理的。在本文中,我们将主动的视觉监控作为模仿学习问题,以一种有监督的方式使用深度学习来解决,直接从视觉信息到相机运动,以通过结合计算机视觉和控制来提供令人满意的解决方案。深度卷积神经网络是端到端训练的,因为相机控制器学习了控制相机以遵循多个目标并从单个图像中估算其密度所需的整个处理管道。实验结果表明,所提出的解决方案对各种条件具有鲁棒性,并且能够以监控的目标数量和监视时间比传统方法获得更好的监视性能,同时达到25 fps。从而使其成为在监视和智能环境应用中进行多目标主动监视的实用和负担得起的解决方案。

The increasing need for automated visual monitoring and control for applications such as smart camera surveillance, traffic monitoring, and intelligent environments, necessitates the improvement of methods for visual active monitoring. Traditionally, the active monitoring task has been handled through a pipeline of modules such as detection, filtering, and control. In this paper we frame active visual monitoring as an imitation learning problem to be solved in a supervised manner using deep learning, to go directly from visual information to camera movement in order to provide a satisfactory solution by combining computer vision and control. A deep convolutional neural network is trained end-to-end as the camera controller that learns the entire processing pipeline needed to control a camera to follow multiple targets and also estimate their density from a single image. Experimental results indicate that the proposed solution is robust to varying conditions and is able to achieve better monitoring performance both in terms of number of targets monitored as well as in monitoring time than traditional approaches, while reaching up to 25 FPS. Thus making it a practical and affordable solution for multi-target active monitoring in surveillance and smart-environment applications.

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