Détail du document
Identifiant

oai:arXiv.org:2410.05497

Sujet
Computer Science - Computer Vision...
Auteur
Moslehpour, Mohsen Lu, Yichao Chuang, Pierce Shenoy, Ashish Chatterjee, Debojeet Harpale, Abhay Jayakumar, Srihari Bhardwaj, Vikas Nam, Seonghyeon Kumar, Anuj
Catégorie

Computer Science

Année

2024

Date de référencement

16/10/2024

Mots clés
wearable devices code egocentric qr
Métrique

Résumé

QR codes have become ubiquitous in daily life, enabling rapid information exchange.

With the increasing adoption of smart wearable devices, there is a need for efficient, and friction-less QR code reading capabilities from Egocentric point-of-views.

However, adapting existing phone-based QR code readers to egocentric images poses significant challenges.

Code reading from egocentric images bring unique challenges such as wide field-of-view, code distortion and lack of visual feedback as compared to phones where users can adjust the position and framing.

Furthermore, wearable devices impose constraints on resources like compute, power and memory.

To address these challenges, we present EgoQR, a novel system for reading QR codes from egocentric images, and is well suited for deployment on wearable devices.

Our approach consists of two primary components: detection and decoding, designed to operate on high-resolution images on the device with minimal power consumption and added latency.

The detection component efficiently locates potential QR codes within the image, while our enhanced decoding component extracts and interprets the encoded information.

We incorporate innovative techniques to handle the specific challenges of egocentric imagery, such as varying perspectives, wider field of view, and motion blur.

We evaluate our approach on a dataset of egocentric images, demonstrating 34% improvement in reading the code compared to an existing state of the art QR code readers.

;Comment: Submitted to ICLR 2025

Moslehpour, Mohsen,Lu, Yichao,Chuang, Pierce,Shenoy, Ashish,Chatterjee, Debojeet,Harpale, Abhay,Jayakumar, Srihari,Bhardwaj, Vikas,Nam, Seonghyeon,Kumar, Anuj, 2024, EgoQR: Efficient QR Code Reading in Egocentric Settings

Document

Ouvrir

Partager

Source

Articles recommandés par ES/IODE IA

Skin cancer prevention behaviors, beliefs, distress, and worry among hispanics in Florida and Puerto Rico
skin cancer hispanic/latino prevention behaviors protection motivation theory florida puerto rico variables rico psychosocial behavior response efficacy levels skin cancer participants prevention behaviors spanish-preferring tampeños puerto hispanics