ROAD DAMAGE DETECTION SYSTEM USING CANNY EDGE DETECTION ALGORITHM FOR TIME EFFICIENCY IN ROAD CONDITION SURVEY
The transportation sector is one of the sectors affected by technological developments. Land transportation is still the main focus of transportation in Indonesia. With a total length of roads reaching hundreds of thousands of kilometers, it is necessary to monitor the health of the roads to ensu...
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Format: | Final Project |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/69305 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | The transportation sector is one of the sectors affected by technological developments. Land
transportation is still the main focus of transportation in Indonesia. With a total length of
roads reaching hundreds of thousands of kilometers, it is necessary to monitor the health of
the roads to ensure the roads can be traversed properly and immediately follow up if there are
roads that are not suitable for passage. Currently, Dinas Bina Marga dan Penataan Ruang
Provinsi Jawa Barat is working with the Bandung Institute of Technology to develop the
“Survei Kondisi Perkerasan Jalan” application to support the efficiency of Road Condition
Survey activities. However, this application is still running semi-automatically with human
intervention, one of which is the detection process. For that we need a solution in the form of
detecting road damage automatically.
This study aims to detect road damage automatically using the Canny Edge Detection
algorithm. In operation, the system is capable of detecting road damage and selecting the
damaged road area. The benefit of this research is to simplify the road damage classification
process and time efficiency of road condition survey activities.
The results of the tests carried out on video recordings of roads with a camera angle of 0
degrees using the Canny Edge Detection algorithm are 54.5% accuracy, 24.2% precision,
78.9% recall, and 37% F-score. |
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