Sesame Plant Segmentation Dataset: A YOLO Formatted Annotated Dataset
- URL: http://arxiv.org/abs/2601.07970v1
- Date: Mon, 12 Jan 2026 20:04:40 GMT
- Title: Sesame Plant Segmentation Dataset: A YOLO Formatted Annotated Dataset
- Authors: Sunusi Ibrahim Muhammad, Ismail Ismail Tijjani, Saadatu Yusuf Jumare, Fatima Isah Jibrin,
- Abstract summary: The dataset comprises 206 training images, 43 validation images, and 43 test images in YOLO compatible segmentation format.<n>Data was collected using a high resolution mobile camera from farms in Jirdede, Daura Local Government Area, Katsina State, Nigeria.<n>The dataset represents a novel contribution to sesame focused agricultural vision datasets in Nigeria.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This paper presents the Sesame Plant Segmentation Dataset, an open source annotated image dataset designed to support the development of artificial intelligence models for agricultural applications, with a specific focus on sesame plants. The dataset comprises 206 training images, 43 validation images, and 43 test images in YOLO compatible segmentation format, capturing sesame plants at early growth stages under varying environmental conditions. Data were collected using a high resolution mobile camera from farms in Jirdede, Daura Local Government Area, Katsina State, Nigeria, and annotated using the Segment Anything Model version 2 with farmer supervision. Unlike conventional bounding box datasets, this dataset employs pixel level segmentation to enable more precise detection and analysis of sesame plants in real world farm settings. Model evaluation using the Ultralytics YOLOv8 framework demonstrated strong performance for both detection and segmentation tasks. For bounding box detection, the model achieved a recall of 79 percent, precision of 79 percent, mean average precision at IoU 0.50 of 84 percent, and mean average precision from 0.50 to 0.95 of 58 percent. For segmentation, it achieved a recall of 82 percent, precision of 77 percent, mean average precision at IoU 0.50 of 84 percent, and mean average precision from 0.50 to 0.95 of 52 percent. The dataset represents a novel contribution to sesame focused agricultural vision datasets in Nigeria and supports applications such as plant monitoring, yield estimation, and agricultural research.
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