Datasets:
image imagewidth (px) 1.02k 1.02k | label class label 3
classes | crop_type stringclasses 2
values |
|---|---|---|
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana | |
0Class_A | banana |
End of preview. Expand in Data Studio
Banana Guava Quality Classification
A dataset for quality classification of bananas and guavas. The dataset contains 1,748 images across 3 classes: Class_A, Class_B, Defect.
Images per class:
- Class_A: 671
- Class_B: 469
- Defect: 608
This dataset is indexed on https://project-agml.github.io/ as part of the AgML python library.
Citation
@article{kumari2024banana,
title={Banana and Guava dataset for machine learning and deep learning-based quality classification},
author={Kumari, Abiban and Singh, Jaswinder},
journal={Data in Brief},
volume={57},
pages={111025},
year={2024},
publisher={Elsevier}
}
KUMARI, ABIBAN; Singh, Jaswinder (2024), “Fruits (Banana and Guava) datasets for non-destructive quality classifications”, Mendeley Data, V2, doi: 10.17632/56td5w4wz2.2
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