MangroveSeg:用于卫星图像中红树林检测和分割的深度监督指导特征聚合网络

IF 2.4 2区 农林科学 Q1 FORESTRY
Forests Pub Date : 2024-01-08 DOI:10.3390/f15010127
Heng Dong, Yifan Gao, Riqing Chen, Lifang Wei
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引用次数: 0

摘要

红树林是沿海生态环境系统的重要组成部分。为了制定保护战略,利用卫星图像自动、准确地探测红树林的分布和面积至关重要。尽管许多基于深度学习的红树林检测和分割算法已经取得了显著进展,但由于红树林的区域结构复杂、与周围环境的相似性大以及红树林的多样性,这项任务仍然具有挑战性。为了解决这些问题,我们提出了一种用于红树林检测和分割的新型深度监督引导特征聚合网络,称为 MangroveSeg,它基于 ResNet 的 U 型结构,结合了注意力机制和多尺度特征提取框架。我们还将红树林的检测和分割视为伪装检测问题,以改进和提高准确性。为了从隐藏层提取的特征图中确定更多信息,我们在上采样中引入了深度监督模型,以增强特征表示。利用带有注意门的空间注意机制来突出重要区域,抑制与任务无关的特征反应。特征融合模块可通过将各层与底层信息绑定来获取多尺度信息,并更新特征映射。我们使用卫星图像数据集验证了我们的红树林检测和分割框架,该数据集包含 4000 幅 256 × 256 像素的图像;其中 3002 幅用于训练,998 幅用于测试。卫星图像数据集来自中国海南省海口市东寨港国家级自然保护区。所提出的方法达到了 89.58% 的总体准确度、89.02% 的精确度和 80.7% 的 mIoU。我们还利用训练有素的 MangroveSeg 模型在其他地区的卫星图像上检测红树林。我们评估了一些红树林区域的统计面积,发现使用 MangroveSeg 的评估准确率可达 96%。所提出的 MangroveSeg 模型可以自动、准确地从卫星图像中检测红树林的分布和面积,为生态环境监测提供了一种方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MangroveSeg: Deep-Supervision-Guided Feature Aggregation Network for Mangrove Detection and Segmentation in Satellite Images
Mangrove forests are significant participants in coastal ecological environment systems. For the development of protection strategies, it is crucial to automatically and accurately detect the distribution and area of mangroves using satellite images. Although many deep-learning-based mangrove detection and segmentation algorithms have made notable progress, the complex regional structures and the great similarity between mangroves and the surrounding environment, as well as the diversity of mangroves, render the task still challenging. To cover these issues, we propose a novel deep-supervision-guided feature aggregation network for mangrove detection and segmentation called MangroveSeg, which is based on a U-shaped structure with ResNet, combining an attention mechanism and a multi-scale feature extraction framework. We also consider the detection and segmentation of mangroves as camouflage detection problems for the improvement and enhancement of accuracy. To determine more information from extracted feature maps in a hidden layer, a deep supervision model is introduced in up-sampling to enhance feature representation. The spatial attention mechanism with attention gates is utilized to highlight significant regions and suppress task-independent feature responses. The feature fusion module can obtain multi-scale information by binding each layer to the underlying information and update feature mappings. We validated our framework for mangrove detection and segmentation using a satellite image dataset, which includes 4000 images comprising 256 × 256 pixels; we used 3002 for training and 998 for testing. The satellite images dataset was obtained from the Dongzhaigang National Nature Reserve located in Haikou City, Hainan Province, China. The proposed method achieved a 89.58% overall accuracy, 89.02% precision, and 80.7% mIoU. We also used the trained MangroveSeg model to detect mangroves on satellite images from other regions. We evaluated the statistical square measure of some mangrove areas and found that the evaluation accuracy can reach 96% using MangroveSeg. The proposed MangroveSeg model can automatically and accurately detect the distribution and area of mangroves from satellite images, which provides a method for monitoring the ecological environment.
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来源期刊
Forests
Forests FORESTRY-
CiteScore
4.40
自引率
17.20%
发文量
1823
审稿时长
19.02 days
期刊介绍: Forests (ISSN 1999-4907) is an international and cross-disciplinary scholarly journal of forestry and forest ecology. It publishes research papers, short communications and review papers. There is no restriction on the length of the papers. Our aim is to encourage scientists to publish their experimental and theoretical research in as much detail as possible. Full experimental and/or methodical details must be provided for research articles.
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