| Literature DB >> 34095388 |
Jennifer Jepkoech1, David Muchangi Mugo1, Benson K Kenduiywo2, Edna Chebet Too3.
Abstract
This article introduces Arabica coffee leaf datasets known as JMuBEN and JMuBEN2. Image acquisition was done in Mutira coffee plantation in Kirinyaga county-Kenya under real-world conditions using a digital camera and with the help of a pathologist. JMuBEN dataset contains three compressed folders with images inside. The first file contains 7682 images of Cerscospora, the second contains 8337 images of rust and the last one contains 6572 images of Phoma. JMuBEN2 contains two compressed files where the first file contains 16,979 images of Miner while the other contains 18,985 images of healthy leaves. In total, the dataset contains 58,555 leaf images spread across five classes (Phoma, Cescospora, Rust, Healthy, Miner,) with annotations regarding the state of the leaves and the disease names. The Arabica datasets contain images that facilitates training and validation during the utilization of deep learning algorithms for coffee plant leaf disease recognition and classification. The dataset is publicly and freely available at https://data.mendeley.com/datasets/tgv3zb82nd/1 and https://data.mendeley.com/datasets/t2r6rszp5c/1 respectively.Entities:
Keywords: Arabica coffee; Deep learning; Disease diagnosis; Image datasets; Machine learning
Year: 2021 PMID: 34095388 PMCID: PMC8165403 DOI: 10.1016/j.dib.2021.107142
Source DB: PubMed Journal: Data Brief ISSN: 2352-3409
Conditions of the leaves with the number of images for each condition.
| Condition of Leaf | Number of images |
|---|---|
| Healthy | 18,985 |
| Rust | 8337 |
| Miner | 16,979 |
| Phoma | 7682 |
| Rust | 6572 |
Fig. 1An image of a leaf affected by Coffee Leaf Rust.
Fig. 2An image of a leaf affected by Phoma.
Fig. 3An image of a leaf affected by Miner.
Fig. 4An image of a leaf affected by Cescospora.
Fig. 5An image of a leaf affected by Coffee Leaf Rust before cropping.
Fig. 6An image of a leaf affected by Coffee Leaf Rust after cropping.
Fig. 7Image before rotation.
Fig. 8Image after rotation.
| Subject | Computer Science, Agricultural Science, Biological Science |
| Specific subject area | Image processing |
| Type of data | Raw data, images |
| How data were acquired | Data acquisition was done using a Fujifilm X-T4 camera with a sensor size of APS-C, resolution of 26.1MP,viewfinder of 3690 K dots, monitor of 3.0-inch tilt-angle touchscreen, 1620 K dots, autofocus of 425-point AF and maximum continuous shooting rate of15fps (mechanical shutter), 30fps (electronic). |
| Data format | The data are in jpeg format |
| Parameters for data collection | Images were taken on sunny, windy and cloudy days. The images correspond to both back and upper sides of healthy and infected coffee leaves. |
| Description of data collection | Data was collected using a Fujifilm X-T4 camera and with the help of a pathologist. |
| Data source location | Source location was central Kenya and specifically at Mutira coffee plantation in Kirinyaga county with a Latitude 0° 28′ 59″ S and a longitude of 37° 19′ 59″ E. |
| Data accessibility | The datasets are publicly and freely available on mendeley data repository with doi: |