Improving Near-Miss Event Detection Rate at Railway Level Crossings


Autoria(s): Aminmansour, Sina; Maire, Frederic; Larue, Gregoire S.; Wullems, Christian
Data(s)

31/08/2015

Resumo

Even though crashes between trains and road users are rare events at railway level crossings, they are one of the major safety concerns for the Australian railway industry. Nearmiss events at level crossings occur more frequently, and can provide more information about factors leading to level crossing incidents. In this paper we introduce a video analytic approach for automatically detecting and localizing vehicles from cameras mounted on trains for detecting near-miss events. To detect and localize vehicles at level crossings we extract patches from an image and classify each patch for detecting vehicles. We developed a region proposals algorithm for generating patches, and we use a Convolutional Neural Network (CNN) for classifying each patch. To localize vehicles in images we combine the patches that are classified as vehicles according to their CNN scores and positions. We compared our system with the Deformable Part Models (DPM) and Regions with CNN features (R-CNN) object detectors. Experimental results on a railway dataset show that the recall rate of our proposed system is 29% higher than what can be achieved with DPM or R-CNN detectors.

Formato

application/pdf

Identificador

http://eprints.qut.edu.au/87371/

Relação

http://eprints.qut.edu.au/87371/1/DICTA2015_eprint.pdf

Aminmansour, Sina, Maire, Frederic, Larue, Gregoire S., & Wullems, Christian (2015) Improving Near-Miss Event Detection Rate at Railway Level Crossings. In Digital Image Computing: Techniques and Applications (DICTA) 2015, 23rd - 25th of November 2015, Adelaide, South Australia, Australia.

Direitos

Institute of Electrical and Electronics Engineers (IEEE)

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Fonte

Centre for Accident Research & Road Safety - Qld (CARRS-Q); ARC Centre of Excellence for Robotic Vision; School of Electrical Engineering & Computer Science; Faculty of Health; Institute of Health and Biomedical Innovation; Science & Engineering Faculty; School of Psychology & Counselling

Palavras-Chave #Computer Vision #Artificial Intelligence #Convolutional Neural Network (CNN) #Railway Engineering #Vehicle Detection
Tipo

Conference Paper