机构地区:[1]北京林业大学工学院,北京100083 [2]城乡生态环境北京实验室,北京100083 [3]林业装备与自动化国家林业局重点实验室,北京100083 [4]科罗拉多州立大学园艺与景观建筑系,柯林斯堡80523
出 处:《农业工程学报》2023年第18期74-81,共8页Transactions of the Chinese Society of Agricultural Engineering
基 金:国家重点研发计划项目(2019YFD1002401);北京林业大学科技创新计划项目(2021ZY74);北京市共建项目专项。
摘 要:苗木数量统计和库存管理对于大型苗圃经营和管理十分重要。该研究针对种植稠密的云杉地块,以无人机航拍云杉图像为对象,提出一种改进IntegrateNet模型,实现稠密云杉的准确计数。选择对稠密目标识别性能好的IntegrateNet为基础模型,根据稠密云杉粘连严重以及杂草背景干扰进行改进,首先使用自校正卷积(self-calibrated convolutions,SCConv)提高卷积感受野,增强模型对于不同尺寸云杉的适应能力。其次,在特征融合处应用十字交叉注意力机制(criss-cross attention,CCA)提高模型对上下文信息的提取能力。以平均计数准确率(mean counting accuracy,MCA)、平均绝对误差(mean absolute error,MAE)、均方根误差(root mean square error,RMSE)和决定系数R2为评价指标。分析结果表明,改进IntegrateNet模型在181幅测试集上的平均计数准确率,平均绝对误差,均方根误差,决定系数分别达到98.32%,8.99株、13.79株和0.99,相较于TasselNetv3_lite、TasselNetv3_seg和IntegrateNet模型,平均计数准确率分别提升16.44、10.55和9.26个百分点,平均绝对误差分别降低25.62、10.45和6.99株,均方根误差分别降低48.25、13.84和12.52株。改进IntegrateNet模型能够有效提高稠密云杉的计数准确率,可为完善苗木数量统计系统提供算法基础。The number of trees is essential information for modern forestry management,which affects managers'formulation of development strategies.At present,tree inventory mainly relies on manual counting,which is costly,time-consuming and labor-intensive.Using unmanned aerial vehicle(UAV)to count targets has become increasingly popular in agriculture and forestry due to its low cost,ease of operation,and flexibility of use.This study focused on using UAV images to count spruce numbers.A total of 603 images with an average canopy density of 81%and an average plant density of 6667 plants/hm^(2) were selected for the dataset,each containing an average of 354 spruce trees.Among these,205 images had interference factors such as weeds.The images were divided into a training set and a test set at a ratio of 7:3.The training set was expanded by randomly flipping the images to improve the robustness to different flight attitudes of UAV.After data augmentation,844 training images and 181 test images were obtained.Aiming at the problem of dense spruces in natural environments including severe adhesion and background interference such as weeds with similar characteristics to spruces,we selected IntegrateNet,a model known for its strong performance in dense target counting tasks as baseline model for spruces.This study then worked to improve the IntegrateNet model to achieve a more accurate counting of dense spruce that is closer to real-world conditions.First of all,this paper used the self-calibrated convolutions(SCConv)to replace the ordinary convolutional layers at 1/8,1/16 feature maps and density maps in the baseline model to expand the convolution receptive field.Secondly,in order to deal with background interference problems such as weeds and the serious adhesion of the target,this paper added the criss-cross attention mechanism(CCA)to the feature fusion of the IntegrateNet model.It can consider the horizontal and vertical context information of each pixel to generate richer semantic features to improve the contextual informa
关 键 词:无人机 图像处理 目标计数 稠密云杉 改进IntegrateNet
分 类 号:TP391.4[自动化与计算机技术—计算机应用技术]
正在载入数据...
正在载入数据...
正在载入数据...
正在载入数据...
正在载入数据...
正在载入数据...
正在载入数据...