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Marker Based Pedestrian Detection Using Augmented Reality

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Published:24 January 2020Publication History

ABSTRACT

Pedestrian detection is a popular research topic from the last decade. Most of the pedestrian identification models are based on face recognition algorithms. It is a difficult task to detect and track individual pedestrians based on these algorithms because there is a compulsion that their faces should be towards the camera. This limitation makes face recognition algorithms inefficient to detect pedestrians from the backsides. In this paper, we proposed a method for pedestrian detection using marker recognition. Multiple pedestrians are detected and then tracked based on markers attached to their backsides. Attaching markers on back-side of pedestrians helps to recognize them even when they are looking the other way. After the marker is recognized, the unique character related to that marker is displayed as a 3D object. This marker-based pedestrian detection is carried out using a mobile phone system and can be applied to embedded systems. The proposed method makes it possible to recognize up to three pedestrians located at different positions from the camera.

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  1. Marker Based Pedestrian Detection Using Augmented Reality

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          cover image ACM Other conferences
          ICAIP '19: Proceedings of the 2019 3rd International Conference on Advances in Image Processing
          November 2019
          232 pages
          ISBN:9781450376754
          DOI:10.1145/3373419

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          Publication History

          • Published: 24 January 2020

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