arXiv Open Access 2023

Concept-based Anomaly Detection in Retail Stores for Automatic Correction using Mobile Robots

Aditya Kapoor Vartika Sengar Nijil George Vighnesh Vatsal Jayavardhana Gubbi +2 lainnya
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Abstrak

Tracking of inventory and rearrangement of misplaced items are some of the most labor-intensive tasks in a retail environment. While there have been attempts at using vision-based techniques for these tasks, they mostly use planogram compliance for detection of any anomalies, a technique that has been found lacking in robustness and scalability. Moreover, existing systems rely on human intervention to perform corrective actions after detection. In this paper, we present Co-AD, a Concept-based Anomaly Detection approach using a Vision Transformer (ViT) that is able to flag misplaced objects without using a prior knowledge base such as a planogram. It uses an auto-encoder architecture followed by outlier detection in the latent space. Co-AD has a peak success rate of 89.90% on anomaly detection image sets of retail objects drawn from the RP2K dataset, compared to 80.81% on the best-performing baseline of a standard ViT auto-encoder. To demonstrate its utility, we describe a robotic mobile manipulation pipeline to autonomously correct the anomalies flagged by Co-AD. This work is ultimately aimed towards developing autonomous mobile robot solutions that reduce the need for human intervention in retail store management.

Topik & Kata Kunci

Penulis (7)

A

Aditya Kapoor

V

Vartika Sengar

N

Nijil George

V

Vighnesh Vatsal

J

Jayavardhana Gubbi

B

Balamuralidhar P

A

Arpan Pal

Format Sitasi

Kapoor, A., Sengar, V., George, N., Vatsal, V., Gubbi, J., P, B. et al. (2023). Concept-based Anomaly Detection in Retail Stores for Automatic Correction using Mobile Robots. https://arxiv.org/abs/2310.14063

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Tahun Terbit
2023
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en
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arXiv
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Open Access ✓