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一种基于深度学习的集成众包和主动学习的遥感影像变化检测平台。

A Deep Learning Based Platform for Remote Sensing Images Change Detection Integrating Crowdsourcing and Active Learning.

作者信息

Wang Zhibao, Zhang Jie, Bai Lu, Chang Huan, Chen Yuanlin, Zhang Ying, Tao Jinhua

机构信息

School of Computer and Information Technology, Northeast Petroleum University, Daqing 163318, China.

Bohai-Rim Energy Research Institute, Northeast Petroleum University, Qinhuangdao 066004, China.

出版信息

Sensors (Basel). 2024 Feb 26;24(5):1509. doi: 10.3390/s24051509.

DOI:10.3390/s24051509
PMID:38475044
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC10934237/
Abstract

Remote sensing images change detection technology has become a popular tool for monitoring the change type, area, and distribution of land cover, including cultivated land, forest land, photovoltaic, roads, and buildings. However, traditional methods which rely on pre-annotation and on-site verification are time-consuming and challenging to meet timeliness requirements. With the emergence of artificial intelligence, this paper proposes an automatic change detection model and a crowdsourcing collaborative framework. The framework uses human-in-the-loop technology and an active learning approach to transform the manual interpretation method into a human-machine collaborative intelligent interpretation method. This low-cost and high-efficiency framework aims to solve the problem of weak model generalization caused by the lack of annotated data in change detection. The proposed framework can effectively incorporate expert domain knowledge and reduce the cost of data annotation while improving model performance. To ensure data quality, a crowdsourcing quality control model is constructed to evaluate the annotation qualification of the annotators and check their annotation results. Furthermore, a prototype of automatic detection and crowdsourcing collaborative annotation management platform is developed, which integrates annotation, crowdsourcing quality control, and change detection applications. The proposed framework and platform can help natural resource departments monitor land cover changes efficiently and effectively.

摘要

遥感影像变化检测技术已成为监测土地覆盖变化类型、面积和分布的常用工具,土地覆盖包括耕地、林地、光伏、道路和建筑物。然而,传统方法依赖于预先标注和现场核查,耗时且难以满足时效性要求。随着人工智能的出现,本文提出了一种自动变化检测模型和众包协作框架。该框架采用人在回路技术和主动学习方法,将人工解译方法转变为人机协作智能解译方法。这个低成本、高效率的框架旨在解决变化检测中因标注数据不足导致的模型泛化能力弱的问题。所提出的框架能够有效整合专家领域知识,降低数据标注成本,同时提高模型性能。为确保数据质量,构建了众包质量控制模型,以评估标注人员的标注资质并检查其标注结果。此外,还开发了自动检测与众包协作标注管理平台的原型,该平台集成了标注、众包质量控制和变化检测应用。所提出的框架和平台可帮助自然资源部门高效、有效地监测土地覆盖变化。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/49fa/10934237/697e498feb1c/sensors-24-01509-g015.jpg
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