MeatScan:用于基于机器学习的新鲜和变质牛肉分类的图像数据集

IF 1.4 Q3 MULTIDISCIPLINARY SCIENCES
Rose-Mary Owusuaa Mensah Gyening , Michael Appiah Akoto , Kwabena Owusu-Agyemang , Linda Amoako-Banning , Kate Takyi , Peter Appiahene
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引用次数: 0

摘要

本文介绍了MeatScan,这是一个精心策划的图像数据集,用于支持基于深度学习的牛肉新鲜或变质的二元分类。该数据集包含11,000张高分辨率RGB图像(5627张新鲜图像和5373张变质图像),拍摄于真实的加纳环境,包括露天市场、肉店和冷藏设施。根据可观察到的视觉线索(如纹理、颜色和表面状况)对图像进行标记,并由训练有素的数据收集人员在自然光下验证注释。MeatScan为食品质量监测中的监督学习提供结构化和上下文丰富的视觉数据。它解决了计算机视觉和实际食品安全检查之间的关键差距,特别是在低资源环境中。该数据集支持卷积神经网络、迁移学习和数据增强的实验,并作为评估模型对光照可变性、不同肉类纹理和复杂背景的鲁棒性的现实基准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MeatScan: An image dataset for machine learning-based classification of fresh and spoiled cow meat
This article presents MeatScan, a curated image dataset developed to support deep learning-based binary classification of cow meat as fresh or spoiled. The dataset comprises 11,000 high-resolution RGB images (5627 fresh and 5373 spoiled) captured in real-world Ghanaian environments, including open-air markets, butcher shops, and cold storage facilities. Images were labeled based on observable visual cues such as texture, colour, and surface condition, with annotations verified under natural lighting by trained data collectors. MeatScan provides structured and contextually rich visual data for supervised learning in food quality monitoring. It addresses a key gap between advances in computer vision and practical food safety inspection, especially in low-resource settings. The dataset supports experimentation with convolutional neural networks, transfer learning, and data augmentation, and serves as a real-world benchmark for evaluating model robustness to lighting variability, diverse meat textures, and complex backgrounds.
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来源期刊
Data in Brief
Data in Brief MULTIDISCIPLINARY SCIENCES-
CiteScore
3.10
自引率
0.00%
发文量
996
审稿时长
70 days
期刊介绍: Data in Brief provides a way for researchers to easily share and reuse each other''s datasets by publishing data articles that: -Thoroughly describe your data, facilitating reproducibility. -Make your data, which is often buried in supplementary material, easier to find. -Increase traffic towards associated research articles and data, leading to more citations. -Open up doors for new collaborations. Because you never know what data will be useful to someone else, Data in Brief welcomes submissions that describe data from all research areas.
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