Enhanced Out-of-Stock Detection in Retail Shelf Images Based on Deep Learning

Author:

Šikić Franko1ORCID,Kalafatić Zoran1ORCID,Subašić Marko1ORCID,Lončarić Sven1ORCID

Affiliation:

1. Image Processing Laboratory, Faculty of Electrical Engineering and Computing, University of Zagreb, 10000 Zagreb, Croatia

Abstract

The term out-of-stock (OOS) describes a problem that occurs when shoppers come to a store and the product they are seeking is not present on its designated shelf. Missing products generate huge sales losses and may lead to a declining reputation or the loss of loyal customers. In this paper, we propose a novel deep-learning (DL)-based OOS-detection method that utilizes a two-stage training process and a post-processing technique designed for the removal of inaccurate detections. To develop the method, we utilized an OOS detection dataset that contains a commonly used fully empty OOS class and a novel class that represents the frontal OOS. We present a new image augmentation procedure in which some existing OOS instances are enlarged by duplicating and mirroring themselves over nearby products. An object-detection model is first pre-trained using only augmented shelf images and, then, fine-tuned on the original data. During the inference, the detected OOS instances are post-processed based on their aspect ratio. In particular, the detected instances are discarded if their aspect ratio is higher than the maximum or lower than the minimum instance aspect ratio found in the dataset. The experimental results showed that the proposed method outperforms the existing DL-based OOS-detection methods and detects fully empty and frontal OOS instances with 86.3% and 83.7% of the average precision, respectively.

Funder

European Union

Publisher

MDPI AG

Reference49 articles.

1. Spielmaker, K.J. (2012). On-Shelf Availability in Retailing: A Literature Review and Conceptual Framework. [Bachelor’s Thesis, University of Arkansas].

2. Forty years of out-of-stock research-and shelves are still empty;Aastrup;Int. Rev. Retail Distrib. Consum. Res.,2010

3. Doukidis, G.J., and Vrechopoulos, A.P. (2005). Consumer Driven Electronic Transformation, Springer.

4. Reducing out of stock, shrinkage and overstock through RFID in the fresh food supply chain: Evidence from an Italian retail pilot;Bertolini;Int. J. RF Technol.,2013

5. A decision support system for detecting products missing from the shelf based on heuristic rules;Papakiriakopoulos;Decis. Support Syst.,2009

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