Jahin Ifteasam Islam, Khatun Munni, Islam Md Tarequl, Rahman Md Wahidur, Raka Ishrat Zahan
Department of Computer Science and Engineering, Khwaja Yunus Ali University, Sirajganj, Bangladesh.
Department of Computer Science and Engineering, Mawlana Bhasani Science & Technology University, Tangail, Bangladesh.
Data Brief. 2023 Dec 28;52:110018. doi: 10.1016/j.dib.2023.110018. eCollection 2024 Feb.
This study presents a recently compiled dataset called "BDHusk," which encompasses a wide range of husk images representing eight different husk species as a component of cattle feed sourced from different locales in Sirajganj, Bangladesh. The following are eight husk species: Oryza sativa, Zea mays, Triticum aestivum, Cicer arietinum, Lens culinaris, Glycine max, Lathyrus sativus, and Pisum sativum var. arvense L. Poiret. This dataset consists of a total of 2,400 original images and an additional 9,280 augmented images, all showcasing various husk species. Every single one of the original images was taken with the right backdrop and in enough amount of natural light. Every image was appropriately positioned into its respective subfolder, enabling a wide variety of machine learning and deep learning models to make the most effective use of the images. By utilizing this extensive dataset and employing various machine learning and deep learning techniques, researchers have the potential to achieve significant advancements in the fields of agriculture, food and nutrition science, environmental monitoring, and computer sciences. This dataset allows researchers to improve cattle feeding using data-driven methods. Researchers can improve cattle health and production by improving feed compositions. Furthermore, it not only presents potential for substantial advancements in these fields but also serves as a crucial resource for future research endeavors.
本研究展示了一个最近汇编的数据集,名为“BDHusk”,它包含了代表八种不同谷壳种类的广泛谷壳图像,这些谷壳是来自孟加拉国锡拉杰甘杰不同地区的牛饲料的组成部分。以下是这八种谷壳种类:水稻、玉米、普通小麦、鹰嘴豆、小扁豆、大豆、草豌豆和野豌豆。这个数据集总共包含2400张原始图像和另外9280张增强图像,所有图像都展示了各种谷壳种类。每一张原始图像都是在合适的背景下,在充足的自然光下拍摄的。每幅图像都被适当地放置到各自的子文件夹中,使得各种机器学习和深度学习模型能够最有效地利用这些图像。通过利用这个广泛的数据集并采用各种机器学习和深度学习技术,研究人员有潜力在农业、食品与营养科学、环境监测和计算机科学领域取得重大进展。这个数据集使研究人员能够使用数据驱动的方法改善牛的饲养。研究人员可以通过改进饲料成分来改善牛的健康状况和产量。此外,它不仅为这些领域的重大进展提供了潜力,而且还作为未来研究工作的关键资源。