激光与光电子学进展, 2020, 57 (24): 242804, 网络出版: 2020-11-25   

基于改进3D-CNN的多源遥感数据树种识别 下载: 1059次

Tree-Species Identification of Multisource Remote-Sensing Data using Improved 3D-CNN
作者单位
1 新疆农业大学草业与环境科学学院, 新疆 乌鲁木齐 830052
2 安徽师范大学地理与旅游学院, 安徽 芜湖 241000
3 滁州学院计算机与信息工程学院, 安徽 滁州 239000
4 新疆师范大学地理科学与旅游学院, 新疆 乌鲁木齐 830001
摘要
针对森林复杂冠层结构和林分高密度下遥感树种识别精度不高的问题,将能够提取高维数据立体特征的三维卷积神经网络(3D-CNN)引入到遥感影像树种识别中,并利用残差网络(ResNet)对其进行改进,提出三维残差卷积神经网络(3D-RCNN),以减小网络深度带来的误差,降低退化现象的影响。联合高分五号高光谱数据(GF-5 AHIS)和高分六号高空间分辨率数据(GF-6 PMS),辅以森林资源数据和外业调查数据构建样本集。结合3D-RCNN思想构建树种识别模型。实验结果表明:相较于传统3D-CNN,3D-RCNN将模型网络从12层增加到18层,能够深化网络结构,缓解网络退化;联合GF-5 AHIS和GF-6 PMS,3D-RCNN能够有效地识别北亚热带森林树种,且识别精度(91.72%)要优于传统3D-CNN(85.65%)和支持向量机算法(85.22%)。
Abstract
Aim

ing to address the low identification accuracy of remote-sensing tree species of forests with a complex canopy and high density, a three-dimensional convolution neural network (3D-CNN) that can extract the stereoscopic features of hyper-dimensional data is introduced herein, and it can identify remote-sensing images. Furthermore, it is improved through residual network (ResNet) to build a 3D residual convolution neural network (3D-RCNN) to reduce the influence of degradation phenomenon and the inaccuracy caused by network depth. The sample set is constructed by combining GF-5 hyperspectral data (GF-5 AHIS)and GF-6 high spatial resolution data (GF-6 PMS), supplemented by forest resource data and field survey data. Then, a tree species recognition model is constructed based on the concept of 3D-RCNN. The experimental results show that compared with traditional 3D-CNN, the proposed 3D-RCNN increases the model network's density from 12 layers to 18 layers, which can deepen the network structure and alleviate network degradation. By combining GF-5 AHIS and GF-6 PMS, 3D-RCNN can effectively identify northern subtropical forest species, providing better recognition accuracy (91.72%) than traditional 3D-CNN (85.65%) and support vector machine algorithm (85.22%).

栗旭升, 陈冬花, 刘赛赛, 张乃明, 李虎. 基于改进3D-CNN的多源遥感数据树种识别[J]. 激光与光电子学进展, 2020, 57(24): 242804. Xusheng Li, Donghua Chen, Saisai Liu, Naiming Zhang, Hu Li. Tree-Species Identification of Multisource Remote-Sensing Data using Improved 3D-CNN[J]. Laser & Optoelectronics Progress, 2020, 57(24): 242804.

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