An Indian Roads Dataset for Supported and Suspended Traffic Lights
Detection
- URL: http://arxiv.org/abs/2209.04203v1
- Date: Fri, 9 Sep 2022 09:37:50 GMT
- Title: An Indian Roads Dataset for Supported and Suspended Traffic Lights
Detection
- Authors: Sarita Gautam, Anuj Kumar
- Abstract summary: We present a thorough comparison of the existing datasets based on well-developed nations as well as Indian roads.
Our dataset exceeds previous Indian traffic light datasets in size, annotations, and variance.
Various dataset criteria like size, capturing device, a number of cities, and variations of traffic light orientations are considered.
- Score: 6.6268035955374005
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Autonomous vehicles are growing rapidly, in well-developed nations like
America, Europe, and China. Tech giants like Google, Tesla, Audi, BMW, and
Mercedes are building highly efficient self-driving vehicles. However, the
technology is still not mainstream for developing nations like India, Thailand,
Africa, etc., In this paper, we present a thorough comparison of the existing
datasets based on well-developed nations as well as Indian roads. We then
developed a new dataset "Indian Roads Dataset" (IRD) having more than 8000
annotations extracted from 3000+ images shot using a 64 (megapixel) camera. All
the annotations are manually labelled adhering to the strict rules of
annotations. Real-time video sequences have been captured from two different
cities in India namely New Delhi and Chandigarh during the day and night-light
conditions. Our dataset exceeds previous Indian traffic light datasets in size,
annotations, and variance. We prove the amelioration of our dataset by
providing an extensive comparison with existing Indian datasets. Various
dataset criteria like size, capturing device, a number of cities, and
variations of traffic light orientations are considered. The dataset can be
downloaded from here https://sites.google.com/view/ird-dataset/home
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