CVMMNov 16, 2020

An End-to-end Method for Producing Scanning-robust Stylized QR Codes

arXiv:2011.07815v11 citations
AI Analysis

This addresses the need for personalized and aesthetic QR codes in marketing and design, representing an incremental improvement over fixed-style methods.

The paper tackles the problem of generating visually appealing QR codes with diverse styles while maintaining scanning robustness, achieving high-quality results in both visual effect and scanning-robustness for real-world applications.

Quick Response (QR) code is one of the most worldwide used two-dimensional codes.~Traditional QR codes appear as random collections of black-and-white modules that lack visual semantics and aesthetic elements, which inspires the recent works to beautify the appearances of QR codes. However, these works adopt fixed generation algorithms and therefore can only generate QR codes with a pre-defined style. In this paper, combining the Neural Style Transfer technique, we propose a novel end-to-end method, named ArtCoder, to generate the stylized QR codes that are personalized, diverse, attractive, and scanning-robust.~To guarantee that the generated stylized QR codes are still scanning-robust, we propose a Sampling-Simulation layer, a module-based code loss, and a competition mechanism. The experimental results show that our stylized QR codes have high-quality in both the visual effect and the scanning-robustness, and they are able to support the real-world application.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes