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Image Dataset for Tomato Quality Grading: Healthy vs. Defective Classes for Deep Learning

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Zenodo2026-05-09 更新2026-05-26 收录
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https://zenodo.org/doi/10.5281/zenodo.20060545
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This dataset contains a collection of tomato images captured under uncontrolled, real-world conditions. Unlike laboratory-grade datasets, these images were taken using various mobile phone cameras in everyday environments, featuring tomatoes purchased from local supermarkets. The core objective of this dataset is to provide a "real-world" benchmark for image classification, forcing models to handle variability in lighting, backgrounds, and camera quality. Dataset Structure: The data is organized into a standard directory structure for Deep Learning: train/: Images for model training. validation/: Images for model evaluation and hyperparameter tuning. Classes and Labeling: The dataset is split into two categories based on visual quality: tomates_ok: Tomatoes in good condition. Filenames follow the pattern *_1.jpg. tomates_no_ok: Tomatoes with visual defects, damage, or in poor condition. Filenames follow the pattern *_0.jpg. Technical Context: Source: Real-world retail environments (supermarkets). Capture Device: Various mobile smartphones (non-standardized). Environment: Uncontrolled lighting, diverse backgrounds, and varying angles. Format: JPG. Task: Binary Image Classification for automated quality inspection.
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Zenodo
创建时间:
2026-05-09
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