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Using Keypoint Matching and Interactive Self Attention Network to verify Retail POSMs

2021-10-07 17:37:09
Harshita Seth, Sonaal Kant, Muktabh Mayank Srivastava

Abstract

Point of Sale Materials(POSM) are the merchandising and decoration items that are used by companies to communicate product information and offers in retail stores. POSMs are part of companies' retail marketing strategy and are often applied as stylized window displays around retail shelves. In this work, we apply computer vision techniques to the task of verification of POSMs in supermarkets by telling if all desired components of window display are present in a shelf image. We use Convolutional Neural Network based unsupervised keypoint matching as a baseline to verify POSM components and propose a supervised Neural Network based method to enhance the accuracy of baseline by a large margin. We also show that the supervised pipeline is not restricted to the POSM material it is trained on and can generalize. We train and evaluate our model on a private dataset composed of retail shelf images.

Abstract (translated)

URL

https://arxiv.org/abs/2110.03646

PDF

https://arxiv.org/pdf/2110.03646.pdf


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