基于深度学习和无人机遥感的矿区地表生物土壤结皮提取研究

Study on extraction of surface biological soil crust in mining area based on deep learning and UAV remote sensing

  • 摘要: 生物土壤结皮的监测能够助力矿区地表生态恢复工作的有效开展,基于无人机遥感获取生物土壤结皮信息受到广泛关注。矿区地表生物土壤结皮生长零散、不均匀,且野外环境复杂,导致通过影像进行生物土壤结皮提取存在难度。基于深度学习模型分类的高精度和高效率目标,分别提出基于改进UNet++模型和基于轻量级DeeoLabV3+模型的生物土壤结皮提取方法。首先基于UNet++模型的网络结构,优选最佳的Epoch、Backbone及损失函数,得到以ResNeXt为骨干、以软交叉熵组合Dice Loss为损失函数的改进UNet++模型,并与UNet++和U-Net网络模型的测试结果进行对比分析。结果表明:改进的UNet++模型的分类效果最好,生物土壤结皮的精确率为97.88%。然后以DeepLabv3+模型为基础,将其原始骨干网络Xception替换为MobileNetV2轻量级网络,优化改进原DeepLabv3+中ASPP模块的膨胀率,并与原始的DeepLabV3+模型以及将其DCNN结构转换成MobileNetV2网络的模型进行对比,结果表明:所提出的基于轻量级DeepLabv3+模型的训练时间是改进UNet++模型的1/4,模型大小是改进UNet++模型的近1/10,能快速且较为精准地提取生物土壤结皮。在提取精度方面,改进的UNet++具有显著优势;在训练时间以及模型大小上,轻量级DeepLabV3+模型优势更明显。所提出的方法适用于生长不均匀、环境复杂的生物土壤结皮提取,效果良好,为研究干旱地区生物土壤结皮的发育规律提供了可靠的数据支撑,也为深度学习模型在矿区地表信息获取研究领域的应用提供了参考。

     

    Abstract: The monitoring of biological soil crust can help the effective development of surface ecological restoration in mining areas, and obtaining biological soil crust information based on UAV remote sensing has attracted wide attention. It is difficult to extract biological soil crust from images because of the scattered and uneven growth of biological soil crust on the surface of mining area and the complexity of field environment. Based on the high precision and high efficiency of deep learning model classification, an improved UNet++ model and a lightweight DeeoLabV3+ model were proposed to extract biological soil crust. Firstly, the best Epoch, Backbone and loss function are optimized based on the network structure of UNet++ model, and the improved UNet++ model with ResNeXt as the Backbone and Dice Loss as the loss function is obtained. Compared with the test results of UNet++ and U-Net, the results show that the improved UNet++ model has the best classification effect. The accuracy rate of biological soil crust is 97.88%. Then, based on DeepLabv3+ model, the original backbone network Xception network of DeepLabv3+ is changed into MobileNetV2 lightweight network, and the expansion rate of ASPP module in the original DeepLabv3+ were optimized and improved. Compared with the original DeepLabv3+ model and the model that transforms DCNN structure of DeepLabv3+ into MobileNetV2 network, the results show that the training time of the proposed lightweight DeepLabv3+ model is one quarter of that of the improved UNet++ model, and the size of the model is nearly one tenth of that of the improved UNet++ model, which can extract biological soil crust quickly and accurately. In terms of accuracy, the improved UNet++ has obvious advantages in extraction accuracy. Lightweight DeepLabV3+ model has greater advantages in training time and model size. The proposed method is suitable for extracting biological soil crust with uneven growth and complex environment, and has achieved good results, which provides good data support for studying the development law of biological soil crust in arid areas, and further explores the application of deep learning model in the research field of surface information acquisition in mining areas.

     

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