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Main Authors: Zhou, Junchi, Wang, Haozhou, Kato, Yoichiro, Nampally, Tejasri, Rajalakshmi, P., Balram, M., Katsura, Keisuke, Lu, Hao, Mu, Yue, Yang, Wanneng, Gao, Yangmingrui, Xiao, Feng, Chen, Hongtao, Chen, Yuhao, Li, Wenjuan, Wang, Jingwen, Yu, Fenghua, Zhou, Jian, Wang, Wensheng, Hu, Xiaochun, Yang, Yuanzhu, Ding, Yanfeng, Guo, Wei, Liu, Shouyang
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2504.02880
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author Zhou, Junchi
Wang, Haozhou
Kato, Yoichiro
Nampally, Tejasri
Rajalakshmi, P.
Balram, M.
Katsura, Keisuke
Lu, Hao
Mu, Yue
Yang, Wanneng
Gao, Yangmingrui
Xiao, Feng
Chen, Hongtao
Chen, Yuhao
Li, Wenjuan
Wang, Jingwen
Yu, Fenghua
Zhou, Jian
Wang, Wensheng
Hu, Xiaochun
Yang, Yuanzhu
Ding, Yanfeng
Guo, Wei
Liu, Shouyang
author_facet Zhou, Junchi
Wang, Haozhou
Kato, Yoichiro
Nampally, Tejasri
Rajalakshmi, P.
Balram, M.
Katsura, Keisuke
Lu, Hao
Mu, Yue
Yang, Wanneng
Gao, Yangmingrui
Xiao, Feng
Chen, Hongtao
Chen, Yuhao
Li, Wenjuan
Wang, Jingwen
Yu, Fenghua
Zhou, Jian
Wang, Wensheng
Hu, Xiaochun
Yang, Yuanzhu
Ding, Yanfeng
Guo, Wei
Liu, Shouyang
contents Developing computer vision-based rice phenotyping techniques is crucial for precision field management and accelerating breeding, thereby continuously advancing rice production. Among phenotyping tasks, distinguishing image components is a key prerequisite for characterizing plant growth and development at the organ scale, enabling deeper insights into eco-physiological processes. However, due to the fine structure of rice organs and complex illumination within the canopy, this task remains highly challenging, underscoring the need for a high-quality training dataset. Such datasets are scarce, both due to a lack of large, representative collections of rice field images and the time-intensive nature of annotation. To address this gap, we established the first comprehensive multi-class rice semantic segmentation dataset, RiceSEG. We gathered nearly 50,000 high-resolution, ground-based images from five major rice-growing countries (China, Japan, India, the Philippines, and Tanzania), encompassing over 6,000 genotypes across all growth stages. From these original images, 3,078 representative samples were selected and annotated with six classes (background, green vegetation, senescent vegetation, panicle, weeds, and duckweed) to form the RiceSEG dataset. Notably, the sub-dataset from China spans all major genotypes and rice-growing environments from the northeast to the south. Both state-of-the-art convolutional neural networks and transformer-based semantic segmentation models were used as baselines. While these models perform reasonably well in segmenting background and green vegetation, they face difficulties during the reproductive stage, when canopy structures are more complex and multiple classes are involved. These findings highlight the importance of our dataset for developing specialized segmentation models for rice and other crops.
format Preprint
id arxiv_https___arxiv_org_abs_2504_02880
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Global Rice Multi-Class Segmentation Dataset (RiceSEG): A Comprehensive and Diverse High-Resolution RGB-Annotated Images for the Development and Benchmarking of Rice Segmentation Algorithms
Zhou, Junchi
Wang, Haozhou
Kato, Yoichiro
Nampally, Tejasri
Rajalakshmi, P.
Balram, M.
Katsura, Keisuke
Lu, Hao
Mu, Yue
Yang, Wanneng
Gao, Yangmingrui
Xiao, Feng
Chen, Hongtao
Chen, Yuhao
Li, Wenjuan
Wang, Jingwen
Yu, Fenghua
Zhou, Jian
Wang, Wensheng
Hu, Xiaochun
Yang, Yuanzhu
Ding, Yanfeng
Guo, Wei
Liu, Shouyang
Image and Video Processing
Artificial Intelligence
Computer Vision and Pattern Recognition
Developing computer vision-based rice phenotyping techniques is crucial for precision field management and accelerating breeding, thereby continuously advancing rice production. Among phenotyping tasks, distinguishing image components is a key prerequisite for characterizing plant growth and development at the organ scale, enabling deeper insights into eco-physiological processes. However, due to the fine structure of rice organs and complex illumination within the canopy, this task remains highly challenging, underscoring the need for a high-quality training dataset. Such datasets are scarce, both due to a lack of large, representative collections of rice field images and the time-intensive nature of annotation. To address this gap, we established the first comprehensive multi-class rice semantic segmentation dataset, RiceSEG. We gathered nearly 50,000 high-resolution, ground-based images from five major rice-growing countries (China, Japan, India, the Philippines, and Tanzania), encompassing over 6,000 genotypes across all growth stages. From these original images, 3,078 representative samples were selected and annotated with six classes (background, green vegetation, senescent vegetation, panicle, weeds, and duckweed) to form the RiceSEG dataset. Notably, the sub-dataset from China spans all major genotypes and rice-growing environments from the northeast to the south. Both state-of-the-art convolutional neural networks and transformer-based semantic segmentation models were used as baselines. While these models perform reasonably well in segmenting background and green vegetation, they face difficulties during the reproductive stage, when canopy structures are more complex and multiple classes are involved. These findings highlight the importance of our dataset for developing specialized segmentation models for rice and other crops.
title Global Rice Multi-Class Segmentation Dataset (RiceSEG): A Comprehensive and Diverse High-Resolution RGB-Annotated Images for the Development and Benchmarking of Rice Segmentation Algorithms
topic Image and Video Processing
Artificial Intelligence
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2504.02880