StreamCollab: A Streaming Crowd-AI Collaborative System to Smart Urban Infrastructure Monitoring in Social Sensing

Yang Zhang, Lanyu Shang, Ruohan Zong, Zengwu Wang, Ziyi Kou, Dong Wang
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引用次数: 3

Abstract

Social sensing has emerged as a pervasive and scalable sensing paradigm to collect observations of the physical world from human sensors. A key advantage of social sensing is its infrastructure-free nature. In this paper, we focus on a streaming urban infrastructure monitoring (Streaming UIM) problem in social sensing. The goal is to automatically detect the urban infrastructure damages from the streaming imagery data posted on social media by exploring the collective power of both AI and human intelligence from crowdsourcing systems. Our work is motivated by the limitation of current AI and crowdsourcing solutions that either fail in many critical time-sensitive UIM application scenarios or are not easily generalizable to monitor the damage of different types of urban infrastructures. We identify two critical challenges in solving our problem: i) it is difficult to dynamically integrate AI and crowd intelligence to effectively identify and fix the failure cases of AI solutions; ii) it is non-trivial to obtain accurate human intelligence from unreliable crowd workers in streaming UIM applications. In this paper, we propose StreamCollab, a streaming crowd-AI collaborative system that explores the collaborative intelligence from AI and crowd to solve the streaming UIM problem. The evaluation results on a real-world urban infrastructure imagery dataset collected from social media demonstrate that StreamCollab consistently outperforms both state-of-the-art AI and crowd-AI baselines in UIM accuracy while maintaining the lowest computational cost.
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流协同:社会传感中智能城市基础设施监测的流人群-人工智能协同系统
社会感知已经成为一种普遍和可扩展的感知范式,用于从人类传感器收集物理世界的观察结果。社会感知的一个关键优势是它不需要基础设施。本文主要研究社会感知中的流城市基础设施监测(streaming UIM)问题。其目标是,利用众包系统的人工智能和人类智能的集体力量,从社交媒体上发布的流媒体图像数据中自动检测城市基础设施的损坏情况。我们的工作受到当前人工智能和众包解决方案的限制,这些解决方案要么在许多关键的时间敏感的UIM应用场景中失败,要么不容易推广到监测不同类型城市基础设施的破坏。我们确定了解决问题的两个关键挑战:1)很难动态整合人工智能和人群智能,以有效识别和修复人工智能解决方案的失败案例;ii)在流式UIM应用程序中,从不可靠的人群工作者中获得准确的人类智能是非平凡的。在本文中,我们提出了StreamCollab,这是一个流人群-人工智能协同系统,它探索了人工智能和人群的协同智能来解决流UIM问题。对从社交媒体收集的真实城市基础设施图像数据集的评估结果表明,StreamCollab在保持最低计算成本的同时,在UIM精度方面始终优于最先进的人工智能和人群-人工智能基线。
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