Li Lian, Lee JiYon
Fine Arts, Sichuan University of Science & Engineering, Zigong, 643002, China.
Department of Education, Graduate School, Sehan University, Seoul, 151-742, South Korea.
Sci Rep. 2025 Aug 23;15(1):31063. doi: 10.1038/s41598-025-16921-6.
This paper explores the application of deep learning (DL) techniques in landscape design and plant selection, aiming to enhance design efficiency and quality through automated plant leaf image recognition (PLIR). A novel framework based on Convolutional Neural Network (CNN) and Fully Convolutional Network (FCN) is proposed. This framework integrates multi-scale feature fusion, attention mechanisms, and object detection technologies to improve the recognition of landscape elements and the selection of plant leaves. Experimental results demonstrate that the proposed DL framework significantly improves performance in landscape element classification tasks. Specifically, the enhanced FCN model achieves a 4.5% improvement in classification accuracy on the Sift Flow dataset, while fine-grained PLIR accuracy increases by 4.8%. Furthermore, the strategy combining object detection and FCN-based image segmentation further boosts accuracy, reaching 90.4% and 88.7%, respectively. These results validate the model's effectiveness in practical simulations, highlighting its innovative contribution to the digitalization and intelligent advancement of landscape design. The key innovation of this paper lies in the first application of multi-scale feature fusion and attention mechanisms within the FCN model, effectively improving the segmentation capability of complex landscape images. Moreover, background noise interference is reduced by using object detection techniques. Additionally, a domain-adaptive transfer learning strategy and region-weighted loss function are designed, further enhancing the model's accuracy and robustness in plant classification tasks. Through the application of these technologies, this paper not only advances the field of landscape design but also provides technical support for biodiversity conservation and sustainable urban planning.
本文探讨深度学习(DL)技术在景观设计和植物选择中的应用,旨在通过自动植物叶片图像识别(PLIR)提高设计效率和质量。提出了一种基于卷积神经网络(CNN)和全卷积网络(FCN)的新型框架。该框架集成了多尺度特征融合、注意力机制和目标检测技术,以提高景观元素识别和植物叶片选择能力。实验结果表明,所提出的DL框架显著提高了景观元素分类任务的性能。具体而言,增强后的FCN模型在Sift Flow数据集上的分类准确率提高了4.5%,而细粒度PLIR准确率提高了4.8%。此外,结合目标检测和基于FCN的图像分割的策略进一步提高了准确率,分别达到90.4%和88.7%。这些结果验证了该模型在实际模拟中的有效性,突出了其对景观设计数字化和智能化发展的创新贡献。本文的关键创新在于首次在FCN模型中应用多尺度特征融合和注意力机制,有效提高了复杂景观图像的分割能力。此外,通过使用目标检测技术减少了背景噪声干扰。此外,还设计了一种域自适应迁移学习策略和区域加权损失函数,进一步提高了模型在植物分类任务中的准确率和鲁棒性。通过这些技术的应用,本文不仅推动了景观设计领域的发展,还为生物多样性保护和可持续城市规划提供了技术支持。