Image Sensors for Wave Monitoring in Shore Protection: Characterization through a Machine Learning Algorithm
Academic Article
Publication Date:
2021
abstract:
Waves propagating on the water surface can be considered as propagating in a dispersive
medium, where gravity and surface tension at the air-water interface act as restoring forces. The
velocity at which energy is transported in water waves is defined by the group velocity. The paper
reports the use of video-camera observations to study the impact of water waves on an urban shore.
The video-monitoring system consists of two separate cameras equipped with progressive RGB
CMOS sensors that allow 1080p HDTV video recording. The sensing system delivers video signals
that are processed by a machine learning technique. The scope of the research is to identify features
of water waves that cannot be normally observed. First, a conventional modelling was performed
using data delivered by image sensors together with additional data such as temperature, and wind
speed, measured with dedicated sensors. Stealth waves are detected, as are the inverting phenomena
encompassed in waves. This latter phenomenon can be detected only through machine learning.
This double approach allows us to prevent extreme events that can take place in offshore and onshore
areas.
Iris type:
01.01 Articolo in rivista
Keywords:
image sensors; sensors and sensing systems; machine learning; real-time sensing for water waving; shore protection
List of contributors:
Palmisano, Maurizio; Maggi, Sabino
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