Research Article | Open Access
Volume 2025 |Article ID 100082 | https://doi.org/10.1016/j.plaphe.2025.100082

CitrusGAN: sparse-view X-ray CT reconstruction for citrus based on generative adversarial networks

Hansong Xiang,1,4 Zilong Xu,1,4 Yonghua Yu,1 Jiantan Yang,1 Shanjun Li,1,2 Yaohui Chen 1,2,3

1College of Engineering, Huazhong Agricultural University, Wuhan, 430074, Hubei, China
2Key Laboratory of Agricultural Equipment in Mid-Lower Yangtze River, Ministry of Agriculture and Rural Affairs, Wuhan, 430074, Hubei, China
3National Key Laboratory for Germplasm Innovation & Utilization of Horticultural Crops, Wuhan, 430074, Hubei, China
4These authors contributed equally.

Received 
09 Jan 2025
Accepted 
22 Jun 2025
Published
26 Jun 2025

Abstract

3D phenotyping of the external and internal structures is important to breed new fruit species. As manual phenotyping is error-prone and time-consuming, developing high-throughput solutions with enhanced precision and low costs is necessary. This study presents CitrusGAN, a generative adversarial network-based method to reconstruct 3D citrus CT models from sparse-view X-ray images. The input X-rays are arranged in orthogonal pairs to provide additional information, and customized loss functions enable more effective learning of the mapping from 2D X-ray features to 3D CT volumes. Experimental results show that 6 views can generate high-quality citrus CT volumes, with a structural similarity index of 92.1 % and a peak signal-to-noise ratio of 26.374 dB compared with the real CT models. Moreover, the morphology of the generated model can be conveniently measured in the 3D space, facilitating the extraction of phenotypic traits including fruit length, width, height, volume, surface area, peel thickness, number of segments, and edible rate with high precision. As X-rays can be obtained using low-cost X-ray machines with high efficiency, the proposed method can be potentially developed into high-throughput equipment for fruit production lines or portable devices to realize in-field phenotyping.

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