학술논문

Fast, Accurate Barcode Detection in Ultra High-Resolution Images
Document Type
Conference
Source
2021 IEEE International Conference on Image Processing (ICIP) Image Processing (ICIP), 2021 IEEE International Conference on. :1019-1023 Sep, 2021
Subject
Computing and Processing
Signal Processing and Analysis
Image segmentation
Computer vision
Conferences
Pipelines
Semantics
Fitting
Object detection
Barcode detection with deep neural networks
barcode segmentation
Ultra High-Resolution images
Language
ISSN
2381-8549
Abstract
Object detection in Ultra High-Resolution (UHR) images has long been a challenging problem in computer vision due to the varying scales of the targeted objects. When it comes to barcode detection, resizing UHR input images to smaller sizes often leads to the loss of pertinent information, while processing them directly is highly in-efficient and computationally expensive. In this paper, we propose using semantic segmentation to achieve a fast and accurate detection of barcodes of various scales in UHR images. Our pipeline involves a modified Region Proposal Network (RPN) on images of size greater than $10k \times10k$ and a newly proposed Y-Net segmentation network, followed by a post-processing workflow for fitting a bounding box around each segmented barcode mask. The end-to-end system has a latency of 16 milliseconds, which is $2.5 \times$ faster than YOLOv4 and $5.9 \times$ faster than Mask R-CNN. In terms of accuracy, our method outperforms YOLOv4 and Mask R-CNN by a mAP of 5.5% and 47.1% respectively, on a synthetic dataset. We have made available the generated synthetic barcode dataset and its code at http://www.github.com/viplabB/SBD/.