The Korea
Institute of Civil Engineering and Building Technology (KICT) has announced the
development of an 'AI-based automatic pothole detection system'. The system is
designed to be installed on the windshield of a vehicle to detect potholes on
the road surface in real-time. Potholes can damage cars and may even lead to
life-threatening accidents.
South Africa’s
ageing road infrastructure is fraught with dangers. As motorists, we have to be
aware of other vehicles, animals and pedestrians. We also have to take
defensive action against an increasing number of potholes.
In
Johannesburg the city claims it fixes up to 4 500 potholes per month.
The City of
Cape Town reportedly spends more than R110 million per year repairing 250
potholes per week. Despite their efforts, potholes are still prevalent.
In
particular, potholes can cause problems in the rainy seasons.
In Korea,
the number of potholes reported across country from 2016 to 2018 was 657 993.
Total damage compensation amounted to R58million nationwide.
Road surface
management starts with quickly detecting damaged sections, and this involves
vibration-, laser scanning-, and image recognition-based detection
technologies. In particular, with the recent development of the detection
technology using deep neural networks, image recognition-based road surface
management methods are receiving attention. In addition, the image-based
technique can be used with personal devices, such as a vehicle or smartphone
camera. This makes it easier for local governments, which have relied on visual
inspections by humans, to employ the technology.
A research
team at KICT led by Dr Seungki Ryu developed this system that detects potholes
in real-time by photographing the road surface while driving with a vision
sensor installed on the windshield of a vehicle. The AI inference model
semantically segments damages on the road surface using an encoder-decoder
network based on the FCN (fully convolutional neural network) architecture.
A common
problem in image-based detection is that even at the same location images can
vary in the pixel unit information depending on changes in the external
environment. In particular, it may be challenging to identify damages on the
road surface with the AI inference model as the brightness of the road surface
changes over time. To solve this issue, a new CNN (convolutional neural
network) model for image preprocessing was developed and combined with the
semantic segmentation model to show robust detection performance with road
images taken under different brightness conditions.
This
technology consists of a mobile app for gathering data using the AI model and a
map-based cloud server platform to identify potholes based on data transmitted
from the mobile app. Currently, several local governments in Korea, such as
Gwangju Metropolitan City, Goyang-si, and Gimhae-si are piloting this
technology. Dr Ryu’s research team aims to further expand and introduce this
technology to other local governments.
Dr Ryu said
“It is essential to maintain road facilities in good condition in the coming
era of autonomous vehicles. This AI-based technology will make effective road surface
management much easier.”
Photo’s by Pixabay, Ian Taylor, Matt Hoffman.
Article featured in Insurance On Line. (iol.co.za), by staff reporter