基于图像超分辨率方法的水稻移植位置解译

You-Cheng Chen, Yih-Shyh Chiou, Mu-Jan Shih
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引用次数: 0

摘要

由于航空摄影技术的快速发展,无人机现在能够为稻田应用提供必要的全彩图像。本文介绍了一种采用基于生成对抗网络的无监督模型和图像超分辨率方法来提高无人机获取的全彩图像分辨率的技术。然后利用这些改进的图像来检测和解释移植稻田的位置。该过程涉及使用先进的图像处理技术来增强无人机图像的清晰度和细节。采用80/20的训练和测试数据比进行验证,并使用一组已建立的水稻幼苗坐标来评估模型的有效性。结果表明,该方法对水稻移栽位置的识别和解释准确率可达93%以上(f1测量值)。
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Interpretation of Transplanted Positions Based on Image Super-Resolution Approaches for Rice Paddies
Due to rapid developments in aerial photography techniques, drones are now capable of providing essential, full-color images for rice paddy field applications. In this article, a technique is introduced that employs an unsupervised model based on generative adversarial networks and an image super-resolution approach to increase the resolution of full-color images acquired by drones. These improved images are then utilized to detect and interpret the locations of transplanted rice paddies. The process involves the use of advanced image processing techniques to enhance the clarity and detail of drone images. Validation was conducted using an 80/20 training and testing data ratio, and a set of established rice paddy seedling coordinates was used to assess the effectiveness of the model. Based on the obtained results, the accuracy rate for identifying and interpreting the transplanted positions in rice paddies is demonstrated to be above 93%, as measured by the F1-measure value.
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