Data in Brief (Dec 2023)

Comprehensive dataset of annotated rice panicle image from Bangladesh

  • Mohammad Rifat Ahmmad Rashid,
  • Md. Shafayat Hossain,
  • MD Fahim,
  • Md. Shajibul Islam,
  • Tahzib-E-Alindo,
  • Rizvee Hassan Prito,
  • Md. Shahadat Anik Sheikh,
  • Md Sawkat Ali,
  • Mahamudul Hasan,
  • Maheen Islam

Journal volume & issue
Vol. 51
p. 109772

Abstract

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Bangladesh's economy is primarily driven by the agriculture sector. Rice is one of the staple food of Bangladesh. The count of panicles per unit area serves as a widely used indicator for estimating rice yield, facilitating breeding efforts, and conducting phenotypic analysis. By calculating the number of panicles within a given area, researchers and farmers can assess crop density, plant health, and prospective production. The conventional method of estimating rice yields in Bangladesh is time-consuming, inaccurate, and inefficient. To address the challenge of detecting rice panicles, this article provides a comprehensive dataset of annotated rice panicle images from Bangladesh. Data collection was done by a drone equipped with a 4 K resolution camera, and it took place on April 25, 2023, in Bonkhoria Gazipur, Bangladesh. During the day, the drone captured the rice field from various heights and perspectives. After employing various image processing techniques for curation and annotation, the dataset was generated using images extracted from drone video clips, which were then annotated with information regarding rice panicles. The dataset is the largest publicly accessible collection of rice panicle images from Bangladesh, consisting of 2193 original images and 5701 augmented images.

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