Deep Learning And LiDAR Integration For Ssurveillance Camera-based River Water Level Monitoring In Flood Applications | INSTITUTE OF PLANTATION STUDIES (IKP)
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Deep Learning and LiDAR Integration for Ssurveillance Camera-based River Water Level Monitoring in Flood Applications

Recently, surveillance technology was proposed as an alternative to flood monitoring systems. This study introduces a novel approach to flood monitoring by integrating surveillance technology and LiDAR data to estimate river water levels. The methodology involves deep learning semantic segmentation for water extent extraction before utilizing the segmented images and virtual markers with elevation information from light detection and ranging (LiDAR) data for water level estimation. The efficiency was assessed using Spearman's rank-order correlation coefficient, yielding a high correlation of 0.92 between the water level framework with readings from the sensors. The performance metrics were also carried out by comparing both measurements. The results imply accurate and precise model predictions, indicating that the model performs well in closely matching observed values. Additionally, the semi-automated procedure allows data recording in an Excel file, offering an alternative measure when traditional water level measurement is not available. The proposed method proves valuable for on-site water-related information retrieval during flood events, empowering authorities to make informed decisions in flood-related planning and management, thereby enhancing the flood monitoring system in Malaysia.

 

Figure 1: The segmented images were saved from the execution of the automated procedure for Kampung Selisek

 

 

Figure 2: The result was from the water level estimation procedure in the GUI

 

 

Muhadi, N.A., Abdullah, A.F., Bejo, S.K. et al. Deep learning and LiDAR integration for surveillance camera-based river water level monitoring in flood applications. Nat Hazards (2024)

 

Full article: https://doi.org/

Date of Input: 28/06/2024 | Updated: 28/06/2024 | ainzubaidah

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