Active advanced arousal system to alert and avoid the crepuscular animal based vehicle collision

Author:

Munian Yuvaraj1,Martinez-Molina M.E. Antonio2,Alamaniotis Miltiadis1

Affiliation:

1. Department of Electrical and Computer Engineering, The University of Texas at San Antonio, San Antonio, TX, USA

2. Department of Architecture, The University of Texas at San Antonio, TX, USA

Abstract

Animal Vehicle Collision (AVC) is relatively an evolving source of fatality resulting in the deficit of wildlife conservancy along with carnage. It’s a globally distressing and disturbing experience that causes monetary damage, injury, and human-animal mortality. Roadkill has always been atop the research domain and serendipitously provided heterogeneous solutions for collision mitigation and prevention. Despite the abundant solution availability, this research throws a new spotlight on wildlife-vehicle collision mitigation using highly efficient artificial intelligence during nighttime hours. This study focuses mainly on arousal mechanisms of the “Histogram of Oriented Gradients (HOG)” intelligent system with extracted thermography image features, which are then processed by a trained, convolutional neural network (1D-CNN). The above computer vision – deep learning-based alert system has an accuracy between 94%, and 96% on the arousal mechanisms with the empowered real-time data set utilization.

Publisher

IOS Press

Subject

Artificial Intelligence,Computer Vision and Pattern Recognition,Human-Computer Interaction,Software

Reference16 articles.

1. Yuvaraj M, Martinez-Molina A, Alamaniotis M. Intelligent System for Detection of Wild Animals Using HOG and CNN in Automobile Applications, 11th Int. Conf. Information, Intell. Syst. Appl. IISA 2020, 2020.

2. Saleh K, Hossny M, Nahavandi S. Effective vehicle-based kangaroo detection for collision warning systems using region-based convolutional networks. Sensors (Switzerland). 2018; 18.

3. Wildlife warning reflectors do not mitigate wildlife – vehicle collisions on roads;Benten;Accid Anal Prev,2018

4. Pronghorn and mule deer use of underpasses and overpasses along U.S. Highway 191;Sawyer;Wildl Soc Bull,2016

5. Fuzzy Logic-Based Mapping Algorithm for Improving Animal-Vehicle Collision Data;Lao;J Transp Eng,2012

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