Learning and analysis of AusRAP attributes from digital video recording for road safety
conference contribution
posted on 2020-04-29, 00:00 authored by TG Pubudu Sanjeewani, Brijesh VermaThe manual systems for road safety are inefficient, very time consuming and prone to error. Automated systems face many challenges in detecting all road safety objects accurately and accurately measuring the distance between these objects. Therefore, in this paper, a novel approach is proposed to analyze roadside video data in order to assess important attributes pertaining to road safety. The specific aim is to learn and analyse Australian Road Assessment Program (AusRAP) attributes obtained from digital video recordings (DVRs). In this work, a technique for segmentation and classification based on Fully Convolutional Network (FCN) is investigated. The proposed approach takes video frames as input, extracts features through convolutional layer and learns them to classify in fully connected layer. The novelty in our approach is learning road attributes and its application in road safety. The proposed approach is optimized using multiple image sizes and training epochs. The 411 images obtained from roadside video data provided by the Department of Transport and Main Roads (DTMR), Queensland, Australia have been used to analyze the proposed technique. The evaluation results are discussed, and a comparative analysis is presented. © 2019 IEEE.
Funding
Category 1 - Australian Competitive Grants (this includes ARC, NHMRC)
History
Start Page
1End Page
6Number of Pages
6Start Date
2019-12-02Finish Date
2019-12-04eISSN
2151-2205ISSN
2151-2191ISBN-13
9781728141879Location
Dunedin, New ZealandPublisher
IEEEPlace of Publication
Piscataway, NJPublisher DOI
Full Text URL
Peer Reviewed
- Yes
Open Access
- No
Author Research Institute
- Centre for Intelligent Systems
Era Eligible
- Yes
Name of Conference
International Conference on Image and Vision Computing New Zealand (IVCNZ 2019)Usage metrics
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