突破场景和传感器可变性的限制:一种新的农业领域无监督域自适应实例分割框架

IF 11.4 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES
Ren Wei, Lin Yang, Xiang Li, Chenxu Zhu, Lei Zhang, Jie Wang, Jie Liu, Liming Zhu, Chenghu Zhou
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引用次数: 0

摘要

农田地块的提取对农业状况监测、农场管理和粮食安全具有重要意义。已经开发了几种方法来绘制农田地块的分布,其中基于深度学习的监督学习越来越多地被采用。然而,先进的深度学习模型面临着两个主要的局限性:在不同的空间、时间和传感器背景下具有不同的场景和对象特征的泛化能力有限,以及对注释数据集的高要求,以支持训练和验证。为了解决这一挑战,我们引入了一种新的无监督域自适应(UDA)框架(UDA- field Teacher, UDA- ft)用于农业领域包实例分割,该框架旨在将知识从标记的源域转移到未标记的目标域。UDA-FT基于Mask R-CNN框架,并结合了面向目标的教师模型和跨领域的学生模型。该跨领域学生模型嵌入图像适应模块和实例适应模块,采用对抗学习策略缓解跨领域分布差异。此外,我们提出了一种基于软伪标签技术的一致性互学习模块,克服了传统硬伪标签在置信度阈值选择上的局限性,提高了模型在目标域的鲁棒性。此外,为了解决在软伪标签生成过程中难以为密集包装的农田地块生成独立实例标签和捕获空间上下文关系的问题,我们提出了两种数据增强方法,即CutMatch (CM)和LeakyMask (LM)。我们将该框架应用于跨场景和跨传感器数据集,以评估其在不同场景下的有效性和鲁棒性。量化和可视化结果表明,我们的UDA-FT在所有指标上都优于现有的跨场景和跨传感器农田包裹的领域自适应方法。消融研究强调了强数据增强对模型性能的实质性影响,强调了从分布外数据中学习的重要性。作为无监督域自适应技术在农业小块实例分割中的创新应用,本研究为农业遥感图像的域转移提供了一种新的方法,实现了更精确的农业小块实例分割,对全球农业具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Breaking the limitations of scenes and sensors variability: A novel unsupervised domain adaptive instance segmentation framework for agricultural field extraction
Extraction of agricultural field parcels is of great importance for agricultural condition monitoring, farm management, and food security. Several methods have been developed to map the distribution of agricultural field parcels, among which deep learning-based supervised learning is increasingly employed. Nevertheless, advanced deep learning models face two major limitations: limited ability to generalize across different spatial,temporal and sensor contexts with varying scene and object characteristics, and high requirement for annotated datasets to support training and validation. To address this challenge, we introduce a novel unsupervised domain adaptation (UDA) framework (UDA-Field Teacher, UDA-FT) for agricultural field parcel instance segmentation, which is designed to transfer knowledge from labeled source domains to unlabeled target domains. UDA-FT is based on the Mask R-CNN framework and incorporates a target-oriented teacher model and a cross-domain student model. This cross-domain student model embeds an image adaptation module and an instance adaptation module, employing adversarial learning strategies to mitigate cross-domain distribution differences. Additionally, we propose a consistency mutual learning module based on soft pseudo-label technology, overcoming the limitations of traditional hard pseudo-labeling in confidence threshold selection and improving model robustness in the target domain. Furthermore, to address the difficulty in generating independent instance labels for densely packed agricultural field parcels and capturing spatial contextual relationships during soft pseudo-label generation, we propose two data augmentation methods, namely CutMatch (CM) and LeakyMask (LM). We adopted the proposed framework on cross-scene and cross-sensor datasets to evaluate its effectiveness and robustness under different scenes. Quantification and visualization results demonstrate our UDA-FT outperforms existing domain adaptation methods for cross-scene and cross-sensor agricultural field parcels across all metrics. Ablation studies highlight the substantial impact of strong data augmentation on model performance, emphasizing the importance of learning from out-of-distribution data. As an innovative application of unsupervised domain adaptation in agricultural field parcel instance segmentation, this research provides a novel method for domain shift in agricultural remote sensing imagery, enabling more accurate field instance segmentation with significant implications for global agriculture.
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来源期刊
Remote Sensing of Environment
Remote Sensing of Environment 环境科学-成像科学与照相技术
CiteScore
25.10
自引率
8.90%
发文量
455
审稿时长
53 days
期刊介绍: Remote Sensing of Environment (RSE) serves the Earth observation community by disseminating results on the theory, science, applications, and technology that contribute to advancing the field of remote sensing. With a thoroughly interdisciplinary approach, RSE encompasses terrestrial, oceanic, and atmospheric sensing. The journal emphasizes biophysical and quantitative approaches to remote sensing at local to global scales, covering a diverse range of applications and techniques. RSE serves as a vital platform for the exchange of knowledge and advancements in the dynamic field of remote sensing.
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