| 注册
首页|期刊导航|农业机械学报|主干信息共享与多感受野特征自适应融合的作物叶片等级和病害识别方法

主干信息共享与多感受野特征自适应融合的作物叶片等级和病害识别方法

罗洋 何自芬 张印辉 陈光晨

农业机械学报2025,Vol.56Issue(1):377-387,11.
农业机械学报2025,Vol.56Issue(1):377-387,11.DOI:10.6041/j.issn.1000-1298.2025.01.036

主干信息共享与多感受野特征自适应融合的作物叶片等级和病害识别方法

Crop Leaf Grade and Disease Recognition Method Based on Backbone Information Sharing and Multi-receptive Field Feature Adaptive Fusion

罗洋 1何自芬 2张印辉 2陈光晨2

作者信息

  • 1. 红塔烟草(集团)有限责任公司昭通卷烟厂,昭通 657000
  • 2. 昆明理工大学机电工程学院,昆明 650500
  • 折叠

摘要

Abstract

Rapid and accurate recognition of crop leaf grade and disease is integral to the advancement of intelligent equipment for promoting refined management of agricultural products.In response to the problems of low accuracy and high cost of crop leaf grade and disease recognition,a crop leaf grade and disease recognition network(CLGDRNet)was proposed based on backbone information sharing and multi-receptive field feature adaptive fusion.Firstly,CSPNet,GhostNet and ShuffleNet were utilized to build a feature extraction backbone,and the feature information extracted by CSPNet,GhostNet and ShuffleNet was shared to achieve the purpose of information complementarity.Secondly,a multi-receptive field feature adaptive fusion module(MRFA)was designed,and the different receptive field feature maps were adaptively weighted and fused to highlight the effective channel information while enhancing the local receptive fields.Finally,an efficient multi-scale attention mechanism with deep gradient cross-space learning(EMAD)was proposed,the EMAD was embedded in the neck to obtain the deep gradient information and the target coordinate information,in addition,the context information of different scales was fused across the space,which could generate more accurate pixel-level attention to the deep feature map.The experimental results showed that the recognition accuracy of mAP@0.5 and mAP@0.5:0.95 for tobacco leaf grading dataset(TLGD)achieved 85.0%and 76.1%,respectively,and 97.6%and 74.2%for apple leaf disease dataset(ALDD),respectively.Compared with a variety of advanced target detection algorithms,CLGDRNet achieved higher recognition accuracy and faster recognition speed,which could provide key technical support for high-precision fine recognition of crop leaves.

关键词

作物叶片等级/作物叶片病害/目标检测/信息共享/多感受野特征融合

Key words

crop leaf grade/crop leaf disease/object detection/information sharing/multi-receptive field feature fusion

分类

信息技术与安全科学

引用本文复制引用

罗洋,何自芬,张印辉,陈光晨..主干信息共享与多感受野特征自适应融合的作物叶片等级和病害识别方法[J].农业机械学报,2025,56(1):377-387,11.

基金项目

国家自然科学基金项目(62171206、62061022)和中国烟草总公司云南省公司烟叶智能分级项目(HZ2021K0462A) (62171206、62061022)

农业机械学报

OA北大核心

1000-1298

访问量0
|
下载量0
段落导航相关论文