Towards Intelligent Retail: Automated On-Shelf Availability Estimation using a Depth Camera
Articolo
Data di Pubblicazione:
2020
Abstract:
Efcient management of on-shelf availability and inventory is a key issue to achieve customer
satisfaction and reduce the risk of prot loss for both retailers and manufacturers. Conventional store audits
based on physical inspection of shelves are labor-intensive and do not provide reliable assessment. This paper
describes a novel framework for automated shelf monitoring, using a consumer-grade depth sensor. The aim
is to develop a low-cost embedded system for early detection of out-of-stock situations with particular regard
to perishable goods stored in countertop shelves, refrigerated counters, baskets or crates. The proposed
solution exploits 3D point cloud reconstruction and modelling techniques, including surface tting and
occupancy grids, to estimate product availability, based on the comparison between a reference model of
the shelf and its current status. No a priori knowledge about the product type is required, while the shelf
reference model is automatically learnt based on an initial training stage. The output of the system can be
used to generate alerts for store managers, as well as to continuously update product availability estimates
for automated stock ordering and replenishment and for e-commerce apps. Experimental tests performed
in a real retail environment show that the proposed system is able to estimate the on-shelf availability
percentage of different fresh products with a maximum average discrepancy with respect to the actual one of
about 5.0%.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
RGB-D sensors; 3D reconstruction and modeling; automated stock monitoring; intelligent retail
Elenco autori:
D'Orazio, TIZIANA RITA; Cicirelli, Grazia; Milella, Annalisa; Marani, Roberto; Petitti, Antonio
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