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Identifying Various Roadways Obstacles in Infrastructure less Environment Using Depth Learning Approach


Affiliations
1 Department of Computer Application,Shri Ramswaroop Memorial University, Deva Road, Barabanki, Uttar Pradesh, India
2 Department of Computer Application,Shri Ramswaroop Memorial Group of Professional Colleges, Lucknow, Uttar Pradesh, India
 

Traffic conditions in infrastructure-less environment are in many ways not ideal for driving. This is due to undefined road curvature, faded and unmaintained lane markings and various obstacles situations cause vital life loses and damage of vehicles in accidents. This paper provides an efficient approach of finding various roadways obstacles situation using our depth learning approach based on the data collected through a Smartphone. The existing methods are suitable for planned or structured roads. The proposed approach is suitable for planed as well as unplanned roads i.e. for infrastructure-less environment. The approach is capable of effectively classifying roadways obstacles into predefined categories using depth learning approach. While compared with other similar approach this approach is a cost effective approach.

Keywords

Smartphone, Accelerometer, Global Positioning System, Actionable Obstacles, Non-Actionable Obstacles, Advanced Driver Assistance System.
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  • Identifying Various Roadways Obstacles in Infrastructure less Environment Using Depth Learning Approach

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Authors

Chandra Kishor Pandey
Department of Computer Application,Shri Ramswaroop Memorial University, Deva Road, Barabanki, Uttar Pradesh, India
Neeraj Kumar
Department of Computer Application,Shri Ramswaroop Memorial University, Deva Road, Barabanki, Uttar Pradesh, India
Vinay Kumar Mishra
Department of Computer Application,Shri Ramswaroop Memorial Group of Professional Colleges, Lucknow, Uttar Pradesh, India
Abhishek Bajpai
Department of Computer Application,Shri Ramswaroop Memorial University, Deva Road, Barabanki, Uttar Pradesh, India

Abstract


Traffic conditions in infrastructure-less environment are in many ways not ideal for driving. This is due to undefined road curvature, faded and unmaintained lane markings and various obstacles situations cause vital life loses and damage of vehicles in accidents. This paper provides an efficient approach of finding various roadways obstacles situation using our depth learning approach based on the data collected through a Smartphone. The existing methods are suitable for planned or structured roads. The proposed approach is suitable for planed as well as unplanned roads i.e. for infrastructure-less environment. The approach is capable of effectively classifying roadways obstacles into predefined categories using depth learning approach. While compared with other similar approach this approach is a cost effective approach.

Keywords


Smartphone, Accelerometer, Global Positioning System, Actionable Obstacles, Non-Actionable Obstacles, Advanced Driver Assistance System.

References





DOI: https://doi.org/10.13005/ojcst%2F10.03.05