基于无人机多光谱图像的水稻秧苗高精度分割轻量级深度学习模型。

IF 7.6 1区 农林科学 Q1 AGRONOMY
Plant Phenomics Pub Date : 2023-11-30 eCollection Date: 2023-01-01 DOI:10.34133/plantphenomics.0123
Panli Zhang, Xiaobo Sun, Donghui Zhang, Yuechao Yang, Zhenhua Wang
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引用次数: 0

摘要

水稻幼苗的准确分割和检测是实现精准农业和高产栽培的必要条件。然而,目前的方法存在计算复杂度高、对不同水稻品种和密度的鲁棒性差的问题。本文提出了两种轻量级神经网络结构LW-Segnet和LW-Unet,用于水稻秧苗的高精度分割。该网络采用混合轻量级卷积和空间金字塔扩张卷积的编码器-解码器结构,在减少模型参数的同时实现了准确的分割。利用无人机(UAV)获取的多光谱图像对3个水稻品种和不同种植密度的模型进行了训练和测试。实验结果表明,所提出的LW-Segnet和LW-Unet模型在幼苗检测和跨品种行分割上具有更高的f1得分和交联值,表明分割精度得到了提高。此外,模型在处理不同品种和密度时表现出稳定的性能,具有较强的鲁棒性。在效率方面,网络具有更低的图形处理单元内存占用、复杂度和参数,但更快的推理速度,反映出更高的计算效率。特别是,LW-Unet的快速速度表明了实时应用的潜力。该研究为农业任务提供了轻量级而有效的神经网络架构。通过以高精度、高效率和鲁棒性处理多种水稻品种和密度,这些模型有望用于边缘设备和无人机,以协助精准农业和作物管理。这些发现为设计轻量级深度学习模型来解决复杂的农业问题提供了有价值的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Lightweight Deep Learning Models for High-Precision Rice Seedling Segmentation from UAV-Based Multispectral Images.

Accurate segmentation and detection of rice seedlings is essential for precision agriculture and high-yield cultivation. However, current methods suffer from high computational complexity and poor robustness to different rice varieties and densities. This article proposes 2 lightweight neural network architectures, LW-Segnet and LW-Unet, for high-precision rice seedling segmentation. The networks adopt an encoder-decoder structure with hybrid lightweight convolutions and spatial pyramid dilated convolutions, achieving accurate segmentation while reducing model parameters. Multispectral imagery acquired by unmanned aerial vehicle (UAV) was used to train and test the models covering 3 rice varieties and different planting densities. Experimental results demonstrate that the proposed LW-Segnet and LW-Unet models achieve higher F1-scores and intersection over union values for seedling detection and row segmentation across varieties, indicating improved segmentation accuracy. Furthermore, the models exhibit stable performance when handling different varieties and densities, showing strong robustness. In terms of efficiency, the networks have lower graphics processing unit memory usage, complexity, and parameters but faster inference speeds, reflecting higher computational efficiency. In particular, the fast speed of LW-Unet indicates potential for real-time applications. The study presents lightweight yet effective neural network architectures for agricultural tasks. By handling multiple rice varieties and densities with high accuracy, efficiency, and robustness, the models show promise for use in edge devices and UAVs to assist precision farming and crop management. The findings provide valuable insights into designing lightweight deep learning models to tackle complex agricultural problems.

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来源期刊
Plant Phenomics
Plant Phenomics Multiple-
CiteScore
8.60
自引率
9.20%
发文量
26
审稿时长
14 weeks
期刊介绍: Plant Phenomics is an Open Access journal published in affiliation with the State Key Laboratory of Crop Genetics & Germplasm Enhancement, Nanjing Agricultural University (NAU) and published by the American Association for the Advancement of Science (AAAS). Like all partners participating in the Science Partner Journal program, Plant Phenomics is editorially independent from the Science family of journals. The mission of Plant Phenomics is to publish novel research that will advance all aspects of plant phenotyping from the cell to the plant population levels using innovative combinations of sensor systems and data analytics. Plant Phenomics aims also to connect phenomics to other science domains, such as genomics, genetics, physiology, molecular biology, bioinformatics, statistics, mathematics, and computer sciences. Plant Phenomics should thus contribute to advance plant sciences and agriculture/forestry/horticulture by addressing key scientific challenges in the area of plant phenomics. The scope of the journal covers the latest technologies in plant phenotyping for data acquisition, data management, data interpretation, modeling, and their practical applications for crop cultivation, plant breeding, forestry, horticulture, ecology, and other plant-related domains.
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