CVJan 20, 2022

PRMI: A Dataset of Minirhizotron Images for Diverse Plant Root Study

arXiv:2201.08002v115 citations
AI Analysis

This dataset addresses the need for annotated data in plant root research, enabling automated segmentation for studying root system architecture, but it is incremental as it provides new data rather than novel methods.

The authors introduced a large-scale dataset of over 72K minirhizotron images across six plant species to facilitate root segmentation, with 63K images having pixel-level annotations for supervised learning.

Understanding a plant's root system architecture (RSA) is crucial for a variety of plant science problem domains including sustainability and climate adaptation. Minirhizotron (MR) technology is a widely-used approach for phenotyping RSA non-destructively by capturing root imagery over time. Precisely segmenting roots from the soil in MR imagery is a critical step in studying RSA features. In this paper, we introduce a large-scale dataset of plant root images captured by MR technology. In total, there are over 72K RGB root images across six different species including cotton, papaya, peanut, sesame, sunflower, and switchgrass in the dataset. The images span a variety of conditions including varied root age, root structures, soil types, and depths under the soil surface. All of the images have been annotated with weak image-level labels indicating whether each image contains roots or not. The image-level labels can be used to support weakly supervised learning in plant root segmentation tasks. In addition, 63K images have been manually annotated to generate pixel-level binary masks indicating whether each pixel corresponds to root or not. These pixel-level binary masks can be used as ground truth for supervised learning in semantic segmentation tasks. By introducing this dataset, we aim to facilitate the automatic segmentation of roots and the research of RSA with deep learning and other image analysis algorithms.

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