利用动态感知任务的智能资源重构

Deepak R. Karuppiah, R. Grupen, A. Hanson, E. Riseman
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引用次数: 20

摘要

在机器人和传感器网络中,关键挑战之一是决定何时何地部署传感器资源以收集最优价值的信息。这个问题本质上是一个规划、调度和控制网络中的传感器从不断变化的环境中获取数据的问题。问题的动态性排除了传统的基于规则的策略的使用,这些策略只能处理准静态上下文更改。因此,自动上下文派生过程对于在此类系统中提供故障恢复和故障抢占是必不可少的。我们假设传感器网络配置的质量取决于传感器覆盖范围和几何形状、传感器分配策略以及环境中的动态过程。在本文中,我们将展示如何在自适应框架中操纵这些因素,以实现健壮的运行时资源管理。我们在使用多个摄像机网络的人员跟踪应用程序中演示了我们的想法。我们的多摄像机网络的任务规范是分配一个摄像机对,它可以在给定的当前环境中最好地定位一个人类受试者。系统自动导出在摄像机对之间切换的策略,在关注性能指标的同时实现稳健的跟踪。我们的方法是独特的,因为我们没有对场景或场景中发生的活动做出任何先验假设。场景中的运动动力学模型和摄像机网络配置引导策略以提供鲁棒跟踪。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Smart resource reconfiguration by exploiting dynamics in perceptual tasks
In robot and sensor networks, one of the key challenges is to decide when and where to deploy sensory resources to gather information of optimal value. The problem is essentially one of planning, scheduling and controlling the sensors in the network to acquire data from an environment that is constantly varying. The dynamic nature of the problem precludes the use of traditional rule-based strategies that can handle only quasi-static context changes. Automatic context derivation procedures are thus essential for providing fault recovery and fault pre-emption in such systems. We posit that the quality of a sensor network configuration depends on sensor coverage and geometry, sensor allocation policies, and the dynamic processes in the environment. In this paper, we show how these factors can be manipulated in an adaptive framework for robust run-time resource management. We demonstrate our ideas in a people tracking application using a network of multiple cameras. The task specification for our multi-camera network is one of allocating a camera pair that can best localize a human subject given the current context. The system automatically derives policies for switching between camera pairs that enable robust tracking while being attentive to performance measures. Our approach is unique in that we do not make any a priori assumptions about the scene or the activities that take place in the scene. Models of motion dynamics in the scene and the camera network configuration steer the policies to provide robust tracking.
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