Published June 19, 2023 | Version v1
Conference paper Open

Evaluation of Environmental Conditions on Object Detection using Oriented Bounding Boxes for AR Applications

  • 1. Kingston University, London, UK
  • 2. University of Westminster, London, UK
  • 3. International Hellenic University, Greece & South East European Research Centre
  • 4. University of Western Macedonia, Kozani, Greece

Description

The objective of augmented reality (AR) is to add digital content to natural images and videos to create an interactive experience between the user and the environment. Scene analysis and object recognition play a crucial role in AR, as they must be performed quickly and accurately. In this study, a new approach is proposed that involves using oriented bounding boxes with a detection and recognition deep network to improve performance and processing time. The approach is evaluated using two datasets: a real image dataset (DOTA dataset) commonly used for computer vision tasks, and a synthetic dataset that simulates different environmental, lighting, and acquisition conditions. The focus of the evaluation is on small objects, which are difficult to detect and recognise. The results indicate that the proposed approach tends to produce better Average Precision and greater accuracy for small objects in most of the tested conditions.

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Additional details

Funding

European Commission
TALON - Autonomous and Self-organized Artificial Intelligent Orchestrator for a Greener Industry 4.0 101070181