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On wireless video sensor network deployment for 3D indoor space coverage

机译:用于3D室内空间覆盖的无线视频传感器网络部署

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Nowadays, wireless video sensor networks (WVSNs) play a prominent role in a wide range of security, industrial, medical and environmental applications. Unlike traditional sensors such as heat or light sensors often considered with omnidirectional sensing range, the sensing range of a video sensor can be deemed as a fan-shape in 2D and pyramid-shape in 3D, rendering the deployment solutions for traditional sensors and 2D sensing fields inapplicable and incapable of solving the WVSN deployment problem for 3D indoor space coverage. In this paper, we take the first attempt to address this by modeling the general problem in a continuous space and strive to minimize the number of required video sensors to cover the given 3D regions. We then convert it into a discrete version by incorporating 3D grids for our discrete model, which can achieve arbitrary approximation precision by adjusting the grid granularity. We propose a greedy heuristic and an enhanced Depth First Search (DFS) algorithm to solve the discrete version problem where the latter, if given enough time can return the optimal solution. We evaluate our solutions with a customized simulator that can emulate the actual WVSN deployment and 3D indoor space coverage. Our preliminary results demonstrate that our greedy heuristic can reduce the required video sensors by up to 50% over a baseline algorithm, and our enhanced DFS can achieve an additional reduction of video sensors by up to 20%.
机译:如今,无线视频传感器网络(WVSN)在广泛的安全,工业,医疗和环境应用中扮演着重要角色。与通常被认为具有全向感测范围的传统传感器(例如热或光传感器)不同,视频传感器的感测范围可以被视为2D的扇形和3D的金字塔形,从而为传统传感器和2D感测提供了部署解决方案领域,不适用于解决3D室内空间覆盖的WVSN部署问题。在本文中,我们首次尝试通过在连续空间中对通用问题建模来解决此问题,并努力将覆盖给定3D区域的所需视频传感器的数量最小化。然后,通过为离散模型合并3D网格,将其转换为离散版本,该3D网格可以通过调整网格粒度来实现任意近似精度。我们提出了一种贪婪的启发式算法和增强的深度优先搜索(DFS)算法,以解决离散版本问题,如果给定足够的时间,后者可以返回最佳解决方案。我们使用定制的模拟器来评估我们的解决方案,该模拟器可以模拟实际的WVSN部署和3D室内空间覆盖范围。我们的初步结果表明,与基线算法相比,我们的贪婪启发式算法可以将所需的视频传感器减少多达50%,而增强的DFS可以使视频传感器的减少多达20%。

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