Training with Product Digital Twins for AutoRetail Checkout
Yue Yao, Xinyu Tian, Zheng Tang, Sujit Biswas, Huan Lei, Tom Gedeon,, Liang Zheng

TL;DR
This paper introduces a digital twin-based training data optimization framework for automated retail checkout, improving product detection accuracy by mimicking user bias and combining synthetic and real data.
Contribution
We propose a novel digital twin training data generation method that reflects user bias, enhancing detection models for automated retail checkout.
Findings
DT set outperforms existing synthetic datasets in counting accuracy
Combining DT set with pseudo-labeled real data yields further improvements
Digital twins effectively mimic user bias for better model training
Abstract
Automating the checkout process is important in smart retail, where users effortlessly pass products by hand through a camera, triggering automatic product detection, tracking, and counting. In this emerging area, due to the lack of annotated training data, we introduce a dataset comprised of product 3D models, which allows for fast, flexible, and large-scale training data generation through graphic engine rendering. Within this context, we discern an intriguing facet, because of the user "hands-on" approach, bias in user behavior leads to distinct patterns in the real checkout process. The existence of such patterns would compromise training effectiveness if training data fail to reflect the same. To address this user bias problem, we propose a training data optimization framework, i.e., training with digital twins (DtTrain). Specifically, we leverage the product 3D models and optimize…
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Taxonomy
TopicsIndustrial Vision Systems and Defect Detection · Digital Media and Visual Art
Methodsfail
