Blockchain framework for real-time streaming data generated in image sensor networks for smart monitoring

Daiki Masuda, R. Shinkuma, Yuichi Inagaki, E. Oki
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引用次数: 2

Abstract

The smart city concept is attracting increasing attention from society. Smart monitoring, which enables the detection and prevention of road traffic accidents, is one promising application of the smart city concept. The deployment of three-dimensional (3D) image sensor networks formed by light detection and ranging (LIDAR) devices interconnected via a network is a key enabler for smart monitoring. Data collected by image sensor networks for smart monitoring are sensitive because the usage of the data is often related to public safety or law enforcement. Managing sensor data using the blockchain technology is one way to address these sensitivity concerns, as a blockchain network helps prevent data from being tampered with even by the administrators of the system. However, prior works have not considered how to handle streaming data such as image sensor data generated by LIDAR devices in real-time, which means there is a risk of overflow in the network if the data are handled frame by frame. In response to this issue, we propose a blockchain framework for real-time monitoring in a smart city using image sensor networks. Our key concept with this framework is to aggregate hash values converted from multiple frames of image sensor data into one hash value. The proposed framework reduces the number of data ‘writes’ on a blockchain network, thus preventing any overflow. Our framework also enables the estimation of the optimal number of aggregated hash values that minimizes delay while avoiding overflow. Measurements taken in actual environments using a real-world LIDAR dataset demonstrated the effectiveness of the proposed framework.
区块链框架,用于图像传感器网络中生成的实时流数据,用于智能监控
智慧城市的概念越来越受到社会的关注。智能监控能够检测和预防道路交通事故,是智慧城市概念的一个有前途的应用。部署由通过网络互联的光探测和测距(LIDAR)设备组成的三维(3D)图像传感器网络是实现智能监控的关键因素。通过图像传感器网络收集的用于智能监控的数据是敏感的,因为数据的使用通常与公共安全或执法有关。使用区块链技术管理传感器数据是解决这些敏感性问题的一种方法,因为区块链网络有助于防止数据被篡改,即使是被系统管理员篡改。然而,之前的工作没有考虑如何实时处理流数据,如LIDAR设备产生的图像传感器数据,这意味着如果逐帧处理数据,存在网络溢出的风险。针对这一问题,我们提出了一个区块链框架,用于使用图像传感器网络在智慧城市中进行实时监控。这个框架的关键概念是聚合从多帧图像传感器数据转换成一个哈希值的哈希值。提议的框架减少了区块链网络上的数据“写”次数,从而防止了任何溢出。我们的框架还可以估计聚合哈希值的最佳数量,从而在避免溢出的同时最小化延迟。使用真实世界激光雷达数据集在实际环境中进行的测量证明了所提出框架的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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