LAI (Leaf Area Index) is of great importance for crop yield estimation in agronomy. It is directly related to plant growth status, net assimilation rate, plant photosynthesis, and carbon dioxide in the environment. How to measure LAI accurately and efficiently is the key to the crop yield estimation problem. Manual measurement consumes a lot of human resources and material resources. Remote sensing technology is not suitable for near-Earth LAI measurement. Besides, methods based on traditional digital image processing are greatly affected by environmental noise and image exposure. Nowadays, deep learning is widely used in many fields. The improved FCN (Fully Convolutional Network) is proposed in our study for LAI measure task. Eighty-two cucumber images collected from our greenhouse are labeled to fine-tuning the pre-trained model. The result shows that the improved FCN model performs well on our dataset. Our method's mean IoU can reach 0.908, which is 11% better than conventional methods and 4.7% better than the basic FCN model.
翻译:LAI(Leaf地区指数)对于农艺作物产量估算非常重要,它与植物生长状况、净同化率、植物光合作用和环境中的二氧化碳直接相关。如何准确和高效地测量LAI是作物产量估算问题的关键。人工测量消耗了大量人力资源和物质资源。遥感技术不适合近地LAI测量。此外,传统的数字图像处理方法受到环境噪音和图像暴露的严重影响。如今,在许多领域广泛采用深层次学习方法。在我们关于LAI测量任务的研究中提出了改进的FCN(富集网络)的建议。从我们的温室收集的82张黄瓜图像贴上标签,以微调预先培训的模型。结果显示改进的FCN模型在我们的数据集上表现良好。我们的方法意味着IoU可以达到0.908,比常规方法好11%,比基本FCN模型好4.7%。