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Real-time Embedded Person Detection and Tracking for Shopping Behaviour Analysis

Book Contribution - Book Chapter Conference Contribution

Shopping behaviour analysis through counting and tracking of people in shop-like environments offers valuable information for store operators and provides key insights in the stores layout (e.g.frequently visited spots). Instead of using extra staff for this, automated on-premise solutions are preferred. These automated systems should be cost-effective, preferably on lightweight embedded hardware, work in very challenging situations (e.g. handling occlusions) and preferably work real-time. We solve this challenge by implementing a real-time Tensor RT optimized YOLOv3-based pedestrian detector, on a Jetson TX2 hardware platform. By combining the detector with a sparse optical flow tracker we assign a unique ID to each customer and tackle the problem of loosing partially occluded customers. Our detector-tracker based solution achieves an average precision of 81.59% at a processing speed of 10 FPS. Besides valuable statistics, heat maps of frequently visited spots are extracted and used as an overlay on the video stream.
Book: ACIVS: International Conference on Advanced Concepts for Intelligent Vision Systems
Pages: 541 - 553
ISBN:978-3-030-40605-9
Publication year:2020
Accessibility:Open