4.7 Article

Spatial Super Resolution of Real-World Aerial Images for Image-Based Plant Phenotyping

期刊

REMOTE SENSING
卷 13, 期 12, 页码 -

出版社

MDPI
DOI: 10.3390/rs13122308

关键词

aerial imaging; super resolution; pixel size; raw data pre-processing; radiometric calibration; real-world dataset; plant phenotyping

资金

  1. Canada First Research Excellence Fund

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This study evaluated the performance of three deep learning-based super resolution models in enhancing low resolution crop images, with results showing that models trained with real-world datasets can reconstruct higher-fidelity outputs, better suited for measuring plant phenotypes.
Unmanned aerial vehicle (UAV) imaging is a promising data acquisition technique for image-based plant phenotyping. However, UAV images have a lower spatial resolution than similarly equipped in field ground-based vehicle systems, such as carts, because of their distance from the crop canopy, which can be particularly problematic for measuring small-sized plant features. In this study, the performance of three deep learning-based super resolution models, employed as a pre-processing tool to enhance the spatial resolution of low resolution images of three different kinds of crops were evaluated. To train a super resolution model, aerial images employing two separate sensors co-mounted on a UAV flown over lentil, wheat and canola breeding trials were collected. A software workflow to pre-process and align real-world low resolution and high-resolution images and use them as inputs and targets for training super resolution models was created. To demonstrate the effectiveness of real-world images, three different experiments employing synthetic images, manually downsampled high resolution images, or real-world low resolution images as input to the models were conducted. The performance of the super resolution models demonstrates that the models trained with synthetic images cannot generalize to real-world images and fail to reproduce comparable images with the targets. However, the same models trained with real-world datasets can reconstruct higher-fidelity outputs, which are better suited for measuring plant phenotypes.

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