CVDec 5, 2017

Deep Learning for automatic sale receipt understanding

arXiv:1712.01606v111 citations
Originality Synthesis-oriented
AI Analysis

This work addresses the need for accurate consumption statistics in industrial contexts, though it appears incremental by combining existing methods.

The paper tackles the problem of automatically extracting key information from smartphone-captured sale receipts despite scanning imperfections, achieving high confidence levels through a dual-processing approach.

As a general rule, data analytics are now mandatory for companies. Scanned document analysis brings additional challenges introduced by paper damages and scanning quality.In an industrial context, this work focuses on the automatic understanding of sale receipts which enable access to essential and accurate consumption statistics. Given an image acquired with a smart-phone, the proposed work mainly focuses on the first steps of the full tool chain which aims at providing essential information such as the store brand, purchased products and related prices with the highest possible confidence. To get this high confidence level, even if scanning is not perfectly controlled, we propose a double check processing tool-chain using Deep Convolutional Neural Networks (DCNNs) on one hand and more classical image and text processings on another hand.The originality of this work relates in this double check processing and in the joint use of DCNNs for different applications and text analysis.

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