Product data set generation network based on SAM and pix2pix

Aiming at the cumbersome process of collection and labeling of commodity data set caused by rapid change of commodity packaging, this paper designs a commodity data set generation network based on Segment Anything Model (SAM) and Pixel to Pixel (pix2pix). The network uses multi-angle images of a sin...

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Main Authors: Yu Huijun, Zou Zhihao, Kang Shuai
Format: Article
Language:zho
Published: National Computer System Engineering Research Institute of China 2025-04-01
Series:Dianzi Jishu Yingyong
Subjects:
Online Access:http://www.chinaaet.com/article/3000171268
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author Yu Huijun
Zou Zhihao
Kang Shuai
author_facet Yu Huijun
Zou Zhihao
Kang Shuai
author_sort Yu Huijun
collection DOAJ
description Aiming at the cumbersome process of collection and labeling of commodity data set caused by rapid change of commodity packaging, this paper designs a commodity data set generation network based on Segment Anything Model (SAM) and Pixel to Pixel (pix2pix). The network uses multi-angle images of a single commodity as input to generate a data set similar to the actual settlement scene. The data set generation test was carried out on Retail Product Checkout Dataset(RPC) set, and the improvement of the generated data set on target detection effect was further verified on YOLOv7, Fast R-CNN and AlexNet target detection networks. The experimental results show that the generated data set can effectively improve the accuracy of commodity recognition, and has better substitution compared with the actual data set. Compared with the original data set, the recognition accuracy of the three networks generated by fusion data set is improved by 7.3%, 4.9% and 7.8%, respectively. Through this method, the efficiency and practicability of model training are significantly improved, and the manpower and material input required for traditional commodity data collection and labeling is reduced.
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id doaj-art-2562be26e5ee4d6c81bfe05b7e17efb6
institution Kabale University
issn 0258-7998
language zho
publishDate 2025-04-01
publisher National Computer System Engineering Research Institute of China
record_format Article
series Dianzi Jishu Yingyong
spelling doaj-art-2562be26e5ee4d6c81bfe05b7e17efb62025-08-20T03:32:40ZzhoNational Computer System Engineering Research Institute of ChinaDianzi Jishu Yingyong0258-79982025-04-01514232810.16157/j.issn.0258-7998.2457593000171268Product data set generation network based on SAM and pix2pixYu Huijun0Zou Zhihao1Kang Shuai2College of Railway Transportation, Hunan University of TechnologyCollege of Railway Transportation, Hunan University of TechnologyCollege of Railway Transportation, Hunan University of TechnologyAiming at the cumbersome process of collection and labeling of commodity data set caused by rapid change of commodity packaging, this paper designs a commodity data set generation network based on Segment Anything Model (SAM) and Pixel to Pixel (pix2pix). The network uses multi-angle images of a single commodity as input to generate a data set similar to the actual settlement scene. The data set generation test was carried out on Retail Product Checkout Dataset(RPC) set, and the improvement of the generated data set on target detection effect was further verified on YOLOv7, Fast R-CNN and AlexNet target detection networks. The experimental results show that the generated data set can effectively improve the accuracy of commodity recognition, and has better substitution compared with the actual data set. Compared with the original data set, the recognition accuracy of the three networks generated by fusion data set is improved by 7.3%, 4.9% and 7.8%, respectively. Through this method, the efficiency and practicability of model training are significantly improved, and the manpower and material input required for traditional commodity data collection and labeling is reduced.http://www.chinaaet.com/article/3000171268commodity identificationsampix2pixdata set generation
spellingShingle Yu Huijun
Zou Zhihao
Kang Shuai
Product data set generation network based on SAM and pix2pix
Dianzi Jishu Yingyong
commodity identification
sam
pix2pix
data set generation
title Product data set generation network based on SAM and pix2pix
title_full Product data set generation network based on SAM and pix2pix
title_fullStr Product data set generation network based on SAM and pix2pix
title_full_unstemmed Product data set generation network based on SAM and pix2pix
title_short Product data set generation network based on SAM and pix2pix
title_sort product data set generation network based on sam and pix2pix
topic commodity identification
sam
pix2pix
data set generation
url http://www.chinaaet.com/article/3000171268
work_keys_str_mv AT yuhuijun productdatasetgenerationnetworkbasedonsamandpix2pix
AT zouzhihao productdatasetgenerationnetworkbasedonsamandpix2pix
AT kangshuai productdatasetgenerationnetworkbasedonsamandpix2pix