Unitail Detecting Reading And Matching In Retail Scene | Awesome Learning to Hash Add your paper to Learning2Hash

Unitail Detecting Reading And Matching In Retail Scene

Chen Fangyi, Zhang Han, Li Zaiwang, Dou Jiachen, Mo Shentong, Chen Hao, Zhang Yongxin, Ahmed Uzair, Zhu Chenchen, Savvides Marios. Arxiv 2022

[Paper]    
ARXIV

To make full use of computer vision technology in stores, it is required to consider the actual needs that fit the characteristics of the retail scene. Pursuing this goal, we introduce the United Retail Datasets (Unitail), a large-scale benchmark of basic visual tasks on products that challenges algorithms for detecting, reading, and matching. With 1.8M quadrilateral-shaped instances annotated, the Unitail offers a detection dataset to align product appearance better. Furthermore, it provides a gallery-style OCR dataset containing 1454 product categories, 30k text regions, and 21k transcriptions to enable robust reading on products and motivate enhanced product matching. Besides benchmarking the datasets using various state-of-the-arts, we customize a new detector for product detection and provide a simple OCR-based matching solution that verifies its effectiveness.

Similar Work