Transfer Learning-based Road Damage Detection for Multiple Countries
- URL: http://arxiv.org/abs/2008.13101v1
- Date: Sun, 30 Aug 2020 06:48:00 GMT
- Title: Transfer Learning-based Road Damage Detection for Multiple Countries
- Authors: Deeksha Arya (1, 2), Hiroya Maeda (2), Sanjay Kumar Ghosh (1), Durga
Toshniwal (1), Alexander Mraz (2, 3), Takehiro Kashiyama (2), and Yoshihide
Sekimoto (2) ((1) Indian Institute of Technology Roorkee, India, (2) The
University of Tokyo, Japan, (3) Amazon EU, Luxembourg)
- Abstract summary: municipalities and road authorities seek to implement automated evaluation of road damage.
Japan has developed less expensive and readily available Smartphone-based methods for automatic road condition monitoring.
This work assesses the usability of the Japanese model for other countries.
It proposes a large-scale heterogeneous road damage dataset comprising 26620 images collected from multiple countries using smartphones.
- Score: 41.74498230885008
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Many municipalities and road authorities seek to implement automated
evaluation of road damage. However, they often lack technology, know-how, and
funds to afford state-of-the-art equipment for data collection and analysis of
road damages. Although some countries, like Japan, have developed less
expensive and readily available Smartphone-based methods for automatic road
condition monitoring, other countries still struggle to find efficient
solutions. This work makes the following contributions in this context.
Firstly, it assesses the usability of the Japanese model for other countries.
Secondly, it proposes a large-scale heterogeneous road damage dataset
comprising 26620 images collected from multiple countries using smartphones.
Thirdly, we propose generalized models capable of detecting and classifying
road damages in more than one country. Lastly, we provide recommendations for
readers, local agencies, and municipalities of other countries when one other
country publishes its data and model for automatic road damage detection and
classification. Our dataset is available at
(https://github.com/sekilab/RoadDamageDetector/).
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