Abstract
From the perspective of computer vision, the shortcut to extract phenotypic information from a single crop in the field is image segmentation. Plant segmentation is affected by the background environment and illumination. Using deep learning technology to combine depth maps with multi-view images can achieve high-throughput image processing. This article proposes an improved U-Net segmentation network, based on small sample data enhancement, and reconstructs the U-Net model by optimizing the model framework, activation function and loss function. It is used to realize automatic segmentation of plant leaf images and extract relevant feature parameters. Experimental results show that the improved model can provide reliable segmentation results under different leaf sizes, different lighting conditions, different backgrounds, and different plant leaves. The pixel-by-pixel segmentation accuracy reaches 0.94. Compared with traditional methods, this network achieves robust and high-throughput image segmentation. This method is expected to provide key technical support and practical tools for top-view image processing, Unmanned Aerial Vehicle phenotype extraction, and phenotype field platforms.
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CITATION STYLE
Cao, L., Li, H., Yu, H., Chen, G., & Wang, H. (2021). PLANT LEAF SEGMENTATION and PHENOTYPIC ANALYSIS BASED on FULLY CONVOLUTIONAL NEURAL NETWORK. Applied Engineering in Agriculture, 37(5), 929–940. https://doi.org/10.13031/aea.14495
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