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Enhancing Retail Checkout through Video Inpainting, YOLOv8 Detection, and DeepSort Tracking

Arpita Vats, David C. Anastasiu

202336 citationsDOI

Abstract

The retail industry has witnessed a remarkable upswing in the utilization of cutting-edge artificial intelligence and computer vision techniques. Among the prominent challenges in this domain is the development of an automated checkout system that can address the multifaceted issues that arise in real-world checkout scenarios, including object occlusion, motion blur, and similarity in scanned items. In this paper, we propose a sophisticated deep learning-based framework that can effectively recognize, localize, track, and count products as they traverse in front of a camera. Our approach, which we call RetailCounter, is founded on a detect-then-track paradigm, wherein we apply tracking on the bounding box of the detected objects. Furthermore, we have incorporated an automatic identification of the detection region of interest (ROI) and efficient removal of unwanted objects from the ROI. The performance of our proposed framework is competitive, as evidenced by our F1 score of 0.8177 and the fourth-place ranking that we achieved in track 4 of the 2023 AI City Challenge.

Topics & Concepts

Computer scienceArtificial intelligenceComputer visionMinimum bounding boxMotion blurTrack (disk drive)TraverseObject detectionDomain (mathematical analysis)Tracking (education)Similarity (geometry)Deep learningRegion of interestVideo trackingIdentification (biology)Object (grammar)Image (mathematics)Pattern recognition (psychology)GeodesyBotanyMathematical analysisOperating systemGeographyPedagogyPsychologyBiologyMathematicsVideo Surveillance and Tracking MethodsFace recognition and analysisGenerative Adversarial Networks and Image Synthesis
Enhancing Retail Checkout through Video Inpainting, YOLOv8 Detection, and DeepSort Tracking | Litcius