
PremiseHigh‐resolution cameras are very helpful for plant phenotyping as their images enable tasks such as target vs. background discrimination and the measurement and analysis of fine above‐ground plant attributes. However, the acquisition of high‐resolution images of plant roots is more challenging than above‐ground data collection. An effective super‐resolution (SR) algorithm is therefore needed for overcoming the resolution limitations of sensors, reducing storage space requirements, and boosting the performance of subsequent analyses.MethodsWe propose an SR framework for enhancing images of plant roots using convolutional neural networks. We compare three alternatives for training the SR model: (i) training with non‐plant‐root images, (ii) training with plant‐root images, and (iii) pretraining the model with non‐plant‐root images and fine‐tuning with plant‐root images. The architectures of the SR models were based on two state‐of‐the‐art deep learning approaches: a fast SR convolutional neural network and an SR generative adversarial network.ResultsIn our experiments, we observed that the SR models improved the quality of low‐resolution images of plant roots in an unseen data set in terms of the signal‐to‐noise ratio. We used a collection of publicly available data sets to demonstrate that the SR models outperform the basic bicubic interpolation, even when trained with non‐root data sets.DiscussionThe incorporation of a deep learning–based SR model in the imaging process enhances the quality of low‐resolution images of plant roots. We demonstrate that SR preprocessing boosts the performance of a machine learning system trained to separate plant roots from their background. Our segmentation experiments also show that high performance on this task can be achieved independently of the signal‐to‐noise ratio. We therefore conclude that the quality of the image enhancement depends on the desired application.
FOS: Computer and information sciences, root phenotyping, QH301-705.5, Computer Vision and Pattern Recognition (cs.CV), Botany, Computer Science - Computer Vision and Pattern Recognition, super resolution, Quantitative Biology - Quantitative Methods, plant phenotyping, QK1-989, FOS: Biological sciences, convolutional neural networks, Application Articles, generative adversarial networks, Biology (General), Quantitative Methods (q-bio.QM)
FOS: Computer and information sciences, root phenotyping, QH301-705.5, Computer Vision and Pattern Recognition (cs.CV), Botany, Computer Science - Computer Vision and Pattern Recognition, super resolution, Quantitative Biology - Quantitative Methods, plant phenotyping, QK1-989, FOS: Biological sciences, convolutional neural networks, Application Articles, generative adversarial networks, Biology (General), Quantitative Methods (q-bio.QM)
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