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Data-Driven Urban Safety: A CNN-Based Predictive Model for Manhole Hazard Detection

2024 IEEE Students Conference on Engineering and Systems: Interdisciplinary Technologies for Sustainable Future, SCES 2024, Page: 1-5
2024
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Metric Options:   Counts1 Year3 Year

Conference Paper Description

The safety of urban environments is a paramount concern, with manholes serving as critical components of infrastructure by regulating sewages but also susceptible to pose hazard when improperly maintained or obscured. The passing years have shown the level of threat an open manhole poses. In this research paper, we try to introduce a novel approach to address these concerns by leveraging Convolutional Neural Networks (CNNs) for real-time manhole status prediction. This research offers a practical and effective tool for authorities to promptly address hazardous conditions and ultimately minimizing the risks to the public.

Bibliographic Details

Sudabathula Vijay Sai Kumar; Jagini Naga Padmaja; Sri Harsh Mattaparty; Shaik Ismail; Nadimpalli Madana Kailash Varma; Polasani Vaishnavi

Institute of Electrical and Electronics Engineers (IEEE)

Mathematics; Medicine; Physics and Astronomy; Computer Science; Energy; Engineering; Materials Science

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